15 datasets found
  1. Black People - Liveness Detection Video Dataset

    • kaggle.com
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    Updated Apr 11, 2024
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    Unique Data (2024). Black People - Liveness Detection Video Dataset [Dataset]. https://www.kaggle.com/datasets/trainingdatapro/black-people-liveness-detection-video-dataset
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    zip(226917108 bytes)Available download formats
    Dataset updated
    Apr 11, 2024
    Authors
    Unique Data
    License

    Attribution-NonCommercial-NoDerivs 4.0 (CC BY-NC-ND 4.0)https://creativecommons.org/licenses/by-nc-nd/4.0/
    License information was derived automatically

    Description

    Biometric Attack Dataset, Black People

    The similar dataset that includes all ethnicities - Anti Spoofing Real Dataset

    The dataset for face anti spoofing and face recognition includes images and videos of black people. The dataset helps in enchancing the performance of the model by providing wider range of data for a specific ethnic group.

    The videos were gathered by capturing faces of genuine individuals presenting spoofs, using facial presentations. Our dataset proposes a novel approach that learns and detects spoofing techniques, extracting features from the genuine facial images to prevent the capturing of such information by fake users.

    The dataset contains images and videos of real humans with various resolutions, views, and colors, making it a comprehensive resource for researchers working on anti-spoofing technologies.

    People in the dataset

    https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F12421376%2F224e4e37b00a04546bbeaeded5fd3213%2FFrame%2095.png?generation=1712226592271540&alt=media" alt="">

    Types of files in the dataset:

    • photo - selfie of the person
    • video - real video of the person

    Our dataset also explores the use of neural architectures, such as deep neural networks, to facilitate the identification of distinguishing patterns and textures in different regions of the face, increasing the accuracy and generalizability of the anti-spoofing models.

    👉 Legally sourced datasets and carefully structured for AI training and model development. Explore samples from our dataset of 95,000+ human images & videos - Full dataset

    Metadata for the full dataset:

    • assignment_id - unique identifier of the media file
    • worker_id - unique identifier of the person
    • age - age of the person
    • true_gender - gender of the person
    • country - country of the person
    • ethnicity - ethnicity of the person
    • video_extension - video extensions in the dataset
    • video_resolution - video resolution in the dataset
    • video_duration - video duration in the dataset
    • video_fps - frames per second for video in the dataset
    • photo_extension - photo extensions in the dataset
    • photo_resolution - photo resolution in the dataset

    Statistics for the dataset

    https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F12421376%2F9682c567213f0e6e99fecc3c6b511a9d%2FFrame%2096.png?generation=1712832044284031&alt=media" alt="">

    đŸ§© This is just an example of the data. Leave a request here to learn more

    Content

    The dataset consists of: - files - includes 10 folders corresponding to each person and including 1 image and 1 video, - .csv file - contains information about the files and people in the dataset

    File with the extension .csv

    • id: id of the person,
    • selfie_link: link to access the photo,
    • video_link: link to access the video,
    • age: age of the person,
    • country: country of the person,
    • gender: gender of the person,
    • video_extension: video extension,
    • video_resolution: video resolution,
    • video_duration: video duration,
    • video_fps: frames per second for video,
    • photo_extension: photo extension,
    • photo_resolution: photo resolution

    https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F12421376%2F77905aea23afb7f61167bc9ccd0d98cb%2F7-ezgif.com-optimize.gif?generation=1707303271936246&alt=media" alt="">

    🚀 You can learn more about our high-quality unique datasets here

    keywords: liveness detection systems, liveness detection dataset, biometric dataset, biometric data dataset, biometric system attacks, anti-spoofing dataset, face liveness detection, deep learning dataset, face spoofing database, face anti-spoofing, ibeta dataset, face anti spoofing, large-scale face anti spoofing, rich annotations anti spoofing dataset

  2. đŸ‘šâ€đŸ‘©â€đŸ‘§ US Country Demographics

    • kaggle.com
    zip
    Updated Aug 14, 2023
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    mexwell (2023). đŸ‘šâ€đŸ‘©â€đŸ‘§ US Country Demographics [Dataset]. https://www.kaggle.com/datasets/mexwell/us-country-demographics
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    zip(343499 bytes)Available download formats
    Dataset updated
    Aug 14, 2023
    Authors
    mexwell
    License

    http://www.gnu.org/licenses/old-licenses/gpl-2.0.en.htmlhttp://www.gnu.org/licenses/old-licenses/gpl-2.0.en.html

    Area covered
    United States
    Description

    The following data set is information obtained about counties in the United States from 2010 through 2019 through the United States Census Bureau. Information described in the data includes the age distributions, the education levels, employment statistics, ethnicity percents, houseold information, income, and other miscellneous statistics. (Values are denoted as -1, if the data is not available)

    Data Dictionary

    <...

    KeyList of...CommentExample Value
    CountyStringCounty name"Abbeville County"
    StateStringState name"SC"
    Age.Percent 65 and OlderFloatEstimated percentage of population whose ages are equal or greater than 65 years old are produced for the United States states and counties as well as for the Commonwealth of Puerto Rico and its municipios (county-equivalents for Puerto Rico).22.4
    Age.Percent Under 18 YearsFloatEstimated percentage of population whose ages are under 18 years old are produced for the United States states and counties as well as for the Commonwealth of Puerto Rico and its municipios (county-equivalents for Puerto Rico).19.8
    Age.Percent Under 5 YearsFloatEstimated percentage of population whose ages are under 5 years old are produced for the United States states and counties as well as for the Commonwealth of Puerto Rico and its municipios (county-equivalents for Puerto Rico).4.7
    Education.Bachelor's Degree or HigherFloatPercentage for the people who attended college but did not receive a degree and people who received an associate's bachelor's master's or professional or doctorate degree. These data include only persons 25 years old and over. The percentages are obtained by dividing the counts of graduates by the total number of persons 25 years old and over. Tha data is collected from 2015 to 2019.15.6
    Education.High School or HigherFloatPercentage of people whose highest degree was a high school diploma or its equivalent people who attended college but did not receive a degree and people who received an associate's bachelor's master's or professional or doctorate degree. These data include only persons 25 years old and over. The percentages are obtained by dividing the counts of graduates by the total number of persons 25 years old and over. Tha data is collected from 2015 to 201981.7
    Employment.Nonemployer EstablishmentsIntegerAn establishment is a single physical location at which business is conducted or where services or industrial operations are performed. It is not necessarily identical with a company or enterprise which may consist of one establishment or more. The data was collected from 2018.1416
    Ethnicities.American Indian and Alaska Native AloneFloatEstimated percentage of population having origins in any of the original peoples of North and South America (including Central America) and who maintains tribal affiliation or community attachment. This category includes people who indicate their race as "American Indian or Alaska Native" or report entries such as Navajo Blackfeet Inupiat Yup'ik or Central American Indian groups or South American Indian groups.0.3
    Ethnicities.Asian AloneFloatEstimated percentage of population having origins in any of the original peoples of the Far East Southeast Asia or the Indian subcontinent including for example Cambodia China India Japan Korea Malaysia Pakistan the Philippine Islands Thailand and Vietnam. This includes people who reported detailed Asian responses such as: "Asian Indian " "Chinese " "Filipino " "Korean " "Japanese " "Vietnamese " and "Other Asian" or provide other detailed Asian responses.0.4
    Ethnicities.Black AloneFloatEstimated percentage of population having origins in any of the Black racial groups of Africa. It includes people who indicate their race as "Black or African American " or report entries such as African American Kenyan Nigerian or Haitian.27.6
    Ethnicities.Hispanic or LatinoFloat
  3. b

    Percent of Residents - Black/African American (Non-Hispanic) - City

    • data.baltimorecity.gov
    • vital-signs-bniajfi.hub.arcgis.com
    • +1more
    Updated Feb 27, 2020
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    Baltimore Neighborhood Indicators Alliance (2020). Percent of Residents - Black/African American (Non-Hispanic) - City [Dataset]. https://data.baltimorecity.gov/datasets/bniajfi::percent-of-residents-black-african-american-non-hispanic-city
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    Dataset updated
    Feb 27, 2020
    Dataset authored and provided by
    Baltimore Neighborhood Indicators Alliance
    Area covered
    Description

    The percentage of persons, out of the total number of persons living in an area, self-identifying as racially Black or African American (and ethnically non-Hispanic). “Black or African American” refers to a person having origins in any of the Black racial groups of Africa. This indicator includes people who identified their race as “Black”. Source: U.S. Census Bureau, American Community Survey Years Available: 2010, 2011-2015, 2012-2016, 2013-2017, 2014-2018, 2015-2019, 2020, 2017-2021, 2018-2022, 2019-2023

  4. Black Race People - Percentage of resident people.

    • kaggle.com
    zip
    Updated Nov 22, 2019
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    MarĂ­lia Prata (2019). Black Race People - Percentage of resident people. [Dataset]. https://www.kaggle.com/mpwolke/cusersmarildownloadsblackcsv
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    zip(20179477 bytes)Available download formats
    Dataset updated
    Nov 22, 2019
    Authors
    MarĂ­lia Prata
    Description

    Context

    Percentage of resident persons who declared themselves black in relation to the total resident population, at the reference date of the Demographic Census. Source: IBGE, Demographic Census 2010 and Municipal fabric 2010. http://www.geoservicos.ibge.gov.br/geoserver/wms?service=WFS&version=1.0.0&request=GetFeature&typeName=CGEO:vw_per_black_people& om the dataset summary Population Census and Mesh ... License not specified spatial: "type": "Polygon", "coordinates": [[- [- 74.0046, -33.7411], [- 34.7929, -33.7411], [- 34.7929,5.2727], [- 74.0046,5.2727], [- 74.0046, -33.7411 ]]] http://dados.gov.br/dataset/cgeo_vw_per_pessoas_pretas

    Content

    Author and Maintainer: Geosciences Directorate - IBGE and Research Directorate - IBGE Last update: June 12, 2018 package id: 4565a7e3-9509-43dc-b074-433451ef7a47 Organ - Sphere: Federal. Organ - Power: Executive.

    Acknowledgements

    Geosciences Directorate - IBGE and Research Directorate - IBGE http://dados.gov.br

    Photo by Anomaly on Unsplash

    Inspiration

    Nelson Mandela: was a South African anti-apartheid revolutionary, political leader, and philanthropist who served as President of South Africa from 1994 to 1999. He was the country's first black head of state and the first elected in a in a fully representative democratic election. His government focused on dismantling the legacy of apartheid by tackling institutionalized racism and fostering racial reconciliation. https://en.wikipedia.org/wiki/Nelson_Mandela

    Martin Luther King Jr. (January 15, 1929 – April 4, 1968) was an American Christian minister and activist who became the most visible spokesperson and leader in the Civil Rights Movement from 1955 until his assassination in 1968. Born in Atlanta Georgia, King is best known for advancing civil rights through nonviolence and civil disobedience, inspired by his Christian beliefs and the nonviolent activism of Mahatma Gandhi. https://en.wikipedia.org/wiki/Martin_Luther_King_Jr.

  5. d

    Loudoun County 2020 Census Population Patterns by Race and Hispanic or...

    • catalog.data.gov
    • data.virginia.gov
    • +2more
    Updated Nov 15, 2025
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    Loudoun County GIS (2025). Loudoun County 2020 Census Population Patterns by Race and Hispanic or Latino Ethnicity [Dataset]. https://catalog.data.gov/dataset/loudoun-county-2020-census-population-patterns-by-race-and-hispanic-or-latino-ethnicity
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    Dataset updated
    Nov 15, 2025
    Dataset provided by
    Loudoun County GIS
    Area covered
    Loudoun County
    Description

    Use this application to view the pattern of concentrations of people by race and Hispanic or Latino ethnicity. Data are provided at the U.S. Census block group level, one of the smallest Census geographies, to provide a detailed picture of these patterns. The data is sourced from the U.S Census Bureau, 2020 Census Redistricting Data (Public Law 94-171) Summary File. Definitions: Definitions of the Census Bureau’s categories are provided below. This interactive map shows patterns for all categories except American Indian or Alaska Native and Native Hawaiian or Other Pacific Islander. The total population countywide for these two categories is small (1,582 and 263 respectively). The Census Bureau uses the following race categories:Population by RaceWhite – A person having origins in any of the original peoples of Europe, the Middle East, or North Africa.Black or African American – A person having origins in any of the Black racial groups of Africa.American Indian or Alaska Native – A person having origins in any of the original peoples of North and South America (including Central America) and who maintains tribal affiliation or community attachment.Asian – A person having origins in any of the original peoples of the Far East, Southeast Asia, or the Indian subcontinent including, for example, Cambodia, China, India, Japan, Korea, Malaysia, Pakistan, the Philippine Islands, Thailand, and Vietnam.Native Hawaiian or Other Pacific Islander – A person having origins in any of the original peoples of Hawaii, Guam, Samoa, or other Pacific Islands.Some Other Race - this category is chosen by people who do not identify with any of the categories listed above. People can identify with more than one race. These people are included in the Two or More Races Hispanic or Latino PopulationThe Hispanic/Latino population is an ethnic group. Hispanic/Latino people may be of any race.Other layers provided in this tool included the Loudoun County Census block groups, towns and Dulles airport, and the Loudoun County 2021 aerial imagery.

  6. f

    Table_1_Do black women’s lives matter? A study of the hidden impact of the...

    • frontiersin.figshare.com
    xlsx
    Updated May 30, 2024
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    Abha Jaiswal; Lorena NĂșñez Carrasco; Jairo Arrow (2024). Table_1_Do black women’s lives matter? A study of the hidden impact of the barriers to access maternal healthcare for migrant women in South Africa.XLSX [Dataset]. http://doi.org/10.3389/fsoc.2024.983148.s001
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    xlsxAvailable download formats
    Dataset updated
    May 30, 2024
    Dataset provided by
    Frontiers
    Authors
    Abha Jaiswal; Lorena NĂșñez Carrasco; Jairo Arrow
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    South Africa
    Description

    BackgroundStudies on the barriers migrant women face when trying to access healthcare services in South Africa have emphasized economic factors, fear of deportation, lack of documentation, language barriers, xenophobia, and discrimination in society and in healthcare institutions as factors explaining migrants’ reluctance to seek healthcare. Our study aims to visualize some of the outcome effects of these barriers by analyzing data on maternal death and comparing the local population and black African migrant women from the South African Development Countries (SADC) living in South Africa. The heightened maternal mortality of black migrant women in South Africa can be associated with the hidden costs of barriers migrants face, including xenophobic attitudes experienced at public healthcare institutions.MethodsOur analysis is based on data on reported causes of death (COD) from the South African Department of Home Affairs (DHA). Statistics South Africa (Stats SA) processed the data further and coded the cause of death (COD) according to the WHO classification of disease, ICD10. The dataset is available on the StatsSA website (http://nesstar.statssa.gov.za:8282/webview/) for research and statistical purposes. The entire dataset consists of over 10 million records and about 50 variables of registered deaths that occurred in the country between 1997 and 2018. For our analysis, we have used data from 2002 to 2015, the years for which information on citizenship is reliably included on the death certificate. Corresponding benchmark data, in which nationality is recorded, exists only for a 10% sample from the population and housing census of 2011. Mid-year population estimates (MYPE) also exist but are not disaggregated by nationality. For this reason, certain estimates of death proportions by nationality will be relative and will not correspond to crude death rates.ResultsThe total number of female deaths recorded from the years 2002 to 2015 in the country was 3740.761. Of these, 99.09% (n = 3,707,003) were deaths of South Africans and 0.91% (n = 33,758) were deaths of SADC women citizens. For maternal mortality, we considered the total number of deaths recorded for women between the ages of 15 and 49 years of age and were 1,530,495 deaths. Of these, deaths due to pregnancy-related causes contributed to approximately 1% of deaths. South African women contributed to 17,228 maternal deaths and SADC women to 467 maternal deaths during the period under study. The odds ratio for this comparison was 2.02. In other words, our findings show the odds of a black migrant woman from a SADC country dying of a maternal death were more than twice that of a South African woman. This result is statistically significant as this odds ratio, 2.02, falls within the 95% confidence interval (1.82–2.22).ConclusionThe study is the first to examine and compare maternal death among two groups of women, women from SADC countries and South Africa, based on Stats SA data available for the years 2002–2015. This analysis allows for a better understanding of the differential impact that social determinants of health have on mortality among black migrant women in South Africa and considers access to healthcare as a determinant of health. As we examined maternal death, we inferred that the heightened mortality among black migrant women in South Africa was associated with various determinants of health, such as xenophobic attitudes of healthcare workers toward foreigners during the study period. The negative attitudes of healthcare workers toward migrants have been reported in the literature and the media. Yet, until now, its long-term impact on the health of the foreign population has not been gaged. While a direct association between the heightened death of migrant populations and xenophobia cannot be established in this study, we hope to offer evidence that supports the need to focus on the heightened vulnerability of black migrant women in South Africa. As we argued here, the heightened maternal mortality among migrant women can be considered hidden barriers in which health inequality and the pervasive effects of xenophobia perpetuate the health disparity of SADC migrants in South Africa.

  7. w

    South Africa - Internal Migration in South Africa 1999-2000 - Dataset -...

    • wbwaterdata.org
    Updated Mar 16, 2020
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    (2020). South Africa - Internal Migration in South Africa 1999-2000 - Dataset - waterdata [Dataset]. https://wbwaterdata.org/dataset/south-africa-internal-migration-south-africa-1999-2000
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    Dataset updated
    Mar 16, 2020
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    South Africa
    Description

    In 1997 the Population Studies and Training Center (PSTC) of Brown University undertook a series of comparative training and research projects in three countries Vietnam, Ethiopia, and Guatemala. The projects were concerned with the training of planners and researchers in procedures for collecting and analyzing information on migration and its relation to development, women's status, health, and reproduction. Recognizing the importance of migration in South Africa and the pressing need for increasing the number of qualified researchers capable of focussing on this topic, in 1998 the Andrew W. Mellon Foundation provided additional funds to add South Africa to the project. The Centre for Population Studies (CENPOPS) at Pretoria University was given responsibility for the project, working in cooperation with scholars from PSTC at Brown University. The focus of the South African project was on the country's black population. Migration is defined in the survey as movement from one district to another or, if movement is within a district, between a rural and an urban area.

  8. n

    US Populations

    • narcis.nl
    • data.mendeley.com
    Updated Dec 24, 2020
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    Gragert, L (via Mendeley Data) (2020). US Populations [Dataset]. http://doi.org/10.17632/545r9cggzf.1
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    Dataset updated
    Dec 24, 2020
    Dataset provided by
    Data Archiving and Networked Services (DANS)
    Authors
    Gragert, L (via Mendeley Data)
    Area covered
    United States
    Description

    HLA Class II Haplotype Frequency Distributions (for 99% haplotypes per population) and HLA Class II Simulated Populations (Genotype level information for sample sizes of 1000, 5000, 10000 simulated individuals) for 4 broad and 21 detailed US population groups.

    Broad population groups: African Americans (AFA), Asian and Pacific Islanders (API), Caucasians (CAU), Hispanics (HIS).

    Detailed population groups: African American (AAFA), African (AFB), South Asian Indian (AINDI), American Indian - South or Central American (AISC), Alaska native of Aleut (ALANAM), North American Indian (AMIND), Caribbean Black (CARB), Caribbean Hispanic (CARHIS), Caribbean Indian (CARIBI), European Caucasian (EURCAU), Filipino (FILII), Hawaiian or other Pacific Islander (HAWI), Japanese (JAPI), Korean (KORI), Middle Eastern or North Coast of Africa (MENAFC), Mexican or Chicano (MSWHIS), Chinese (NCHI), Hispanic - South or Central American (SCAHIS), Black - South or Central American (SCAMB), Southeast Asian (SCSEAI), Vietnamese (VIET).

  9. f

    Data from: Evolution, population structure and morphology of the African...

    • tandf.figshare.com
    • figshare.com
    xlsx
    Updated Aug 22, 2025
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    Philip Lavretsky; Ramsey Russell; Sara Gonzalez; Vergie M Musni; Alexis DĂ­az; Joshua I Brown (2025). Evolution, population structure and morphology of the African Black Duck Anas sparsa and Yellow-billed Duck A. undulata [Dataset]. http://doi.org/10.6084/m9.figshare.29369262.v1
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    xlsxAvailable download formats
    Dataset updated
    Aug 22, 2025
    Dataset provided by
    Taylor & Francis
    Authors
    Philip Lavretsky; Ramsey Russell; Sara Gonzalez; Vergie M Musni; Alexis DĂ­az; Joshua I Brown
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Biological conservation requires a fundamental understanding of evolutionary history and established contemporary population genetics. Here, we sequenced mitochondrial DNA (mtDNA) and thousands of nuclear loci across individuals of the African Black Duck Anas sparsa and Yellow-billed Duck A. undulata to understand the evolutionary histories and to establish their current population structure. In addition to testing for possible hybridisation between these two African species, we compared the genetic ancestries with known wild and domestic Mallards A. platyrhynchos to understand whether the presence of that species in Africa is resulting in elevated interspecific hybridisation. Finally, we assessed morphological variation within the two African species; although the sample sizes limited inferences for the African Black Duck, we were able to demarcate trait cut-offs for field identification of the sexes of the Yellow-billed Duck. We recovered strong population structure between the two species and the Mallard for both mtDNA and nuclear loci. Whereas we recovered high levels of co-ancestry and low levels of nucleotide diversity among the African Black Duck samples, our demographic analysis estimated a contemporary effective population size of ∌2.5 million, which was equivalent to the estimate for the Yellow-billed Duck. We found that the increase in effective population size of both African species coincides with the onset of the last glacial cycle, with numbers peaking during the last glacial maximum. We recovered two genetic hybrids from the samples: a single hybrid between Yellow-billed Duck and wild Mallard, and the first genetically vetted Yellow-billed Duck × African Black Duck hybrid. Our study not only sheds light on the current population structures and standing genetic variation, but outlines methodologies to build morphological cut-offs for species and sex identification, which could be applied in future conservation efforts for Yellow-billed Ducks and African Black Ducks.

  10. a

    The H3A Diabetes Study: A multi-centre study of the prevalence and...

    • data.ahri.org
    Updated May 12, 2021
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    Kapiga Saidi (2021). The H3A Diabetes Study: A multi-centre study of the prevalence and environmental and genetic determinants of type 2 diabetes in sub-Saharan Africa. (Field Data collection 2015-2018) - South Africa [Dataset]. https://data.ahri.org/index.php/catalog/1013
    Explore at:
    Dataset updated
    May 12, 2021
    Dataset provided by
    Levitt Naomi
    Motala Ayesha†
    Rotimi Charles
    † Lead Principal investigator
    Kaleebu Pontiano
    Kenneth Ekoru
    Sobngwi Eugene
    Mayige Mary
    Smeeth Liam
    Kapiga Saidi
    Balde Naby
    McCarthy Mark
    Nyirenda Moffat , Heyderman Robert
    Sandhu Manjinder
    Oli John
    Adebamowo Clement
    Time period covered
    2015 - 2018
    Area covered
    South Africa
    Description

    Abstract

    Objective The objective of the study is to assess the burden and the spectrum of environmental and genetic determinants of T2D and selected associated microvascular complications in SSA. Methods A multi-national study integrating epidemiological and genomic techniques designed as case-series and population based cross-sectional surveys at 10 sites in 7 countries spanning west, east and southern Africa. Up to 6000 cases of T2D from health facilities and 6000 population based controls will be recruited. This design makes it possible to efficiently draw cases of T2D from health facilities and align them to controls from an appropriate base population while providing an opportunity to estimate prevalence from the survey component of the study. The integrated approach provides a framework for assessing burden, spectrum, and environmental and genetic risk factors for T2D and associated clinical complications.

    Geographic coverage

    Cameroon, Guinea, Malawi, Nigeria, South Africa, Tanzania, Uganda

    Analysis unit

    The unit of analysis is the human individual. Each record corresponds to an individual.

    Universe

    The population in both the survey and clinic arms of the study was of self-identified black Africans, 18 years or older and resident in their respective localities. The inclusion and exclusion criteria are in the table below.

    Inclusion and Exclusion criteria

    Clinic Arm Inclusion
    Age=>25 years. Clinically diagnosed T2D based on data extracted from patient medical records according to current ADA and WHO definitions. Fasting plasma glucose (FPG) =>7.0mmol/ (=>126mg/dl) OR o Two-hours post-load glucose (2h-PG) =>11.1 mmol/l (=>200mg/dl) OR o Symptoms of diabetes and random plasma glucose => 11.1 mmol/l (=200mg/dl) OR o On oral or insulin treatment for diabetes. Individual of African origin (Black) Signed informed consent.

    Exclusion · Pregnant women - can participate six months after childbirth · Diabetes classified other than T2D or doubt as to classification · Living outside the geographical sampling frame for the relevant site · Self-defined ethnic group regarded as other than African (Black) · Unable to give informed consent

    Survey Arm Inclusion
    Resident in the relevant geographical sampling frame Age=>18 years · Individual of African origin (Black) Signed informed consent

    Exclusion · Pregnant women - can participate six months after childbirth · Resident outside the relevant geographical sampling frame · Self-defined ethnic group regarded as other than African (Black) · Unable to give informed consent

    Kind of data

    Includes data on:Socio-demographic, biophysical and anthropometric, biochemical factors as well as fundus image grading.

    Sampling procedure

    T2D cases were recruited purposively selected from health facilities within the geographical location of study centres using patient registers as sampling frames. Surveys were conducted in the catchment areas of the selected health facilities using a two-stage cluster sampling design involving predefined geographical areas such as administrative units and households. Listings of administrative units and households were obtained from each country's National Statistics Office or equivalent agency, or generated with the help of a local leader of the area to provide a sampling frame.

  11. V

    Colonization Records

    • data.virginia.gov
    csv
    Updated Oct 29, 2025
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    Library of Virginia (2025). Colonization Records [Dataset]. https://data.virginia.gov/dataset/colonization-records
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    csvAvailable download formats
    Dataset updated
    Oct 29, 2025
    Dataset authored and provided by
    Library of Virginia
    Description

    Colonization records include documents from two government agencies that raised money and support for the removal of formerly enslaved people to Liberia. As early as 1691, the Virginia General Assembly began passing laws that forced free Black Virginians to leave the Commonwealth. Fears around insurrection and the desire to control the Black population gave rise to institutions dedicated to removing free people of color from Virginia.

    The General Assembly passed an act in 1833 "making appropriations for the removal of free persons of color" to the western coast of Africa and established a board of commissioners charged with carrying out the provisions of the act. “The Board of Commissioners for the Removal of Free Persons of Color records, 1833-1856,” contain correspondence, lists, minutes, oaths, and resolutions. Included are lists of free Black individuals who emigrated to Liberia (including the name of the ship), lists of free Black individuals willing to emigrate, and resolutions to send money to the American Colonization Society and to those who transported the free Black people to Liberia. Also included is a report of the Board of Commissioners, 1835, containing a list of free Black people transported to Liberia and including their names, ages, and where they had lived in Virginia.

    The General Assembly passed an act on April 6, 1853 to create the Colonization Board of Virginia, (chap. 55, p. 58). This act also created appropriations to fund the voluntary transportation and removal of free Black individuals to Liberia or elsewhere in West Africa through the efforts of the Virginia branch of the American Colonization Society. Statutory members of the board included the Secretary of the Commonwealth, the Auditor of Public Accounts, the Second Auditor of Public Accounts, and four other competent members appointed by the Governor. An annual tax was levied on free Black men between the ages of 21 to 55 to help finance the operations of the board. The Colonization Board was authorized to reimburse the agents of the Virginia Colonization Society for transportation costs only after receiving satisfactory proof that the formerly enslaved individuals had been transported out of the state. The Virginia Colonization Society arranged for the actual passage of free Black individuals, and at each meeting the Board received affidavits for particular free people who had already been transported, along with evidence that the individuals were free or born of free parents, that they were residents of Virginia and that they had already been transported to Africa or that they had embarked to another state for transportation. The Board was required to keep a journal of its proceedings, showing all actions taken and monies disbursed, and was also required to submit a biennial report to the General Assembly showing the name, age, sex, and locality of each person removed. The board held its last meeting on August 14, 1858, after the preceding session of the General Assembly failed to extend its existence. The Virginia Board of Colonization journal of proceedings includes lists of the names and ages of free Black individuals transported from the commonwealth to Africa, as well as the county, city, or borough from which they were transported, and in some instances also includes the name of the ship and names of former enslavers.

    Data in this collection is drawn directly from the original historical records and may contain terminology which is now deemed offensive.

  12. N

    African Nova Scotian Family Names by Region

    • data.novascotia.ca
    • open.canada.ca
    • +1more
    csv, xlsx, xml
    Updated Jan 25, 2017
    + more versions
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    (2017). African Nova Scotian Family Names by Region [Dataset]. https://data.novascotia.ca/Population-and-Demographics/African-Nova-Scotian-Family-Names-by-Region/kbzq-tfz7
    Explore at:
    xml, csv, xlsxAvailable download formats
    Dataset updated
    Jan 25, 2017
    License

    http://novascotia.ca/opendata/licence.asphttp://novascotia.ca/opendata/licence.asp

    Area covered
    Nova Scotia
    Description

    The dataset provides the predominate and traditional family names of African Nova Scotians in 6 regions in Nova Scotia. The regions consist of Halifax Metro, South Shore and Yarmouth and Acadian Shore, Bay of Fundy and Annapolis Valley, Northumberland Shore, Eastern Shore and Cape Breton Island. Within all these regions you find 48+ traditional African Nova Scotian communities. The dataset will also provide the communities you can find in each of the six regions.

  13. f

    Demographic and clinical data of the study groups.

    • datasetcatalog.nlm.nih.gov
    • plos.figshare.com
    Updated May 7, 2013
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    Morath, Julia; Kolassa, Iris-Tatjana; Hauer, Daniela; Atsak, Piray; Karabatsiakis, Alexander; Schelling, Gustav; Vogeser, Michael; Gola, Hannah; Campolongo, Patrizia; Roozendaal, Benno; Hamuni, Gilava (2013). Demographic and clinical data of the study groups. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001657400
    Explore at:
    Dataset updated
    May 7, 2013
    Authors
    Morath, Julia; Kolassa, Iris-Tatjana; Hauer, Daniela; Atsak, Piray; Karabatsiakis, Alexander; Schelling, Gustav; Vogeser, Michael; Gola, Hannah; Campolongo, Patrizia; Roozendaal, Benno; Hamuni, Gilava
    Description

    aData are mean±SD; (y) = years; (f) = female; (m) = male.bTrauma-exposed patients received amitriptylin (n = 2), PTSD patients mirtazapin (n = 2) and amitriptylin+mirtazapin (n = 1).cThese scores were only available for ethnically matched controls recruited by the Trauma Center of University of Konstanz (n = 9).dTrauma-exposed individuals without PTSD were of Caucasian origin (n = 6) (two from Iran and two from Turkey, one from Bosnia and one from Afghanistan) and 3 were Black-Africans (one from Gambia, one from Eritrea and one from Senegal).eTrauma- exposed individuals with PTSD were Caucasians (n = 8) (two from Turkey, two from Iran, one from Afghanistan, one from Syria, one from Kosovo and one from Bosnia) and two were Black-Africans (one from Nigeria and one from Togo).fControls were Caucasians (twenty were Germans, one each were from Turkey, Armenia, Israel, two from Romania and two were Russians) and 2 were from Africa (Eritrea and Sudan).*Significantly higher values compared to trauma-exposed individuals without PTSD and to healthy controls.#Significantly higher values compared to healthy controls.

  14. f

    Effect of demographic parameters on ascribed aetiology of CKD.

    • plos.figshare.com
    • datasetcatalog.nlm.nih.gov
    xls
    Updated Apr 18, 2024
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    Yusuf Urade; Zaheera Cassimjee; Chandni Dayal; Sheetal Chiba; Adekunle Ajayi; Malcolm Davies (2024). Effect of demographic parameters on ascribed aetiology of CKD. [Dataset]. http://doi.org/10.1371/journal.pgph.0003119.t002
    Explore at:
    xlsAvailable download formats
    Dataset updated
    Apr 18, 2024
    Dataset provided by
    PLOS Global Public Health
    Authors
    Yusuf Urade; Zaheera Cassimjee; Chandni Dayal; Sheetal Chiba; Adekunle Ajayi; Malcolm Davies
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Effect of demographic parameters on ascribed aetiology of CKD.

  15. f

    Table 2 in Trialling a simple camera-trap based method to estimate...

    • figshare.com
    bin
    Updated Sep 5, 2025
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    Haemish Melville; W. M. Strauss (2025). Table 2 in Trialling a simple camera-trap based method to estimate Black-backed jackal population density [Dataset]. http://doi.org/10.25399/UnisaData.30052072.v1
    Explore at:
    binAvailable download formats
    Dataset updated
    Sep 5, 2025
    Dataset provided by
    University of South Africa
    Authors
    Haemish Melville; W. M. Strauss
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Table 2: Density estimates for Black-backed jackals (Lupulella mesomelas) in the grassland habitat on Telperion Nature Reserve from April to June 2017.

  16. Not seeing a result you expected?
    Learn how you can add new datasets to our index.

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Unique Data (2024). Black People - Liveness Detection Video Dataset [Dataset]. https://www.kaggle.com/datasets/trainingdatapro/black-people-liveness-detection-video-dataset
Organization logo

Black People - Liveness Detection Video Dataset

Face anti spoofing with photos and videos of black people

Explore at:
zip(226917108 bytes)Available download formats
Dataset updated
Apr 11, 2024
Authors
Unique Data
License

Attribution-NonCommercial-NoDerivs 4.0 (CC BY-NC-ND 4.0)https://creativecommons.org/licenses/by-nc-nd/4.0/
License information was derived automatically

Description

Biometric Attack Dataset, Black People

The similar dataset that includes all ethnicities - Anti Spoofing Real Dataset

The dataset for face anti spoofing and face recognition includes images and videos of black people. The dataset helps in enchancing the performance of the model by providing wider range of data for a specific ethnic group.

The videos were gathered by capturing faces of genuine individuals presenting spoofs, using facial presentations. Our dataset proposes a novel approach that learns and detects spoofing techniques, extracting features from the genuine facial images to prevent the capturing of such information by fake users.

The dataset contains images and videos of real humans with various resolutions, views, and colors, making it a comprehensive resource for researchers working on anti-spoofing technologies.

People in the dataset

https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F12421376%2F224e4e37b00a04546bbeaeded5fd3213%2FFrame%2095.png?generation=1712226592271540&alt=media" alt="">

Types of files in the dataset:

  • photo - selfie of the person
  • video - real video of the person

Our dataset also explores the use of neural architectures, such as deep neural networks, to facilitate the identification of distinguishing patterns and textures in different regions of the face, increasing the accuracy and generalizability of the anti-spoofing models.

👉 Legally sourced datasets and carefully structured for AI training and model development. Explore samples from our dataset of 95,000+ human images & videos - Full dataset

Metadata for the full dataset:

  • assignment_id - unique identifier of the media file
  • worker_id - unique identifier of the person
  • age - age of the person
  • true_gender - gender of the person
  • country - country of the person
  • ethnicity - ethnicity of the person
  • video_extension - video extensions in the dataset
  • video_resolution - video resolution in the dataset
  • video_duration - video duration in the dataset
  • video_fps - frames per second for video in the dataset
  • photo_extension - photo extensions in the dataset
  • photo_resolution - photo resolution in the dataset

Statistics for the dataset

https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F12421376%2F9682c567213f0e6e99fecc3c6b511a9d%2FFrame%2096.png?generation=1712832044284031&alt=media" alt="">

đŸ§© This is just an example of the data. Leave a request here to learn more

Content

The dataset consists of: - files - includes 10 folders corresponding to each person and including 1 image and 1 video, - .csv file - contains information about the files and people in the dataset

File with the extension .csv

  • id: id of the person,
  • selfie_link: link to access the photo,
  • video_link: link to access the video,
  • age: age of the person,
  • country: country of the person,
  • gender: gender of the person,
  • video_extension: video extension,
  • video_resolution: video resolution,
  • video_duration: video duration,
  • video_fps: frames per second for video,
  • photo_extension: photo extension,
  • photo_resolution: photo resolution

https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F12421376%2F77905aea23afb7f61167bc9ccd0d98cb%2F7-ezgif.com-optimize.gif?generation=1707303271936246&alt=media" alt="">

🚀 You can learn more about our high-quality unique datasets here

keywords: liveness detection systems, liveness detection dataset, biometric dataset, biometric data dataset, biometric system attacks, anti-spoofing dataset, face liveness detection, deep learning dataset, face spoofing database, face anti-spoofing, ibeta dataset, face anti spoofing, large-scale face anti spoofing, rich annotations anti spoofing dataset

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