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This dataset was meticulously curated by scraping image data from the website Stockmages. It encompasses a comprehensive collection of metadata for a total of 9,101 images. Each entry in the dataset includes key attributes such as the image link, associated tags, the number of likes, and the number of comments. This dataset is ideal for projects involving image analysis, metadata exploration, or sentiment trends in user interactions.
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TwitterAttribution-ShareAlike 4.0 (CC BY-SA 4.0)https://creativecommons.org/licenses/by-sa/4.0/
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This dataset contains resized and cropped free-use stock photos and corresponding image attributes.
All the images have minimum dimensions of 512p and maximum dimensions that are multiples of 32. Each one has a set of image attributes associated with it. Many entries are missing some values, but all should at least have a title.
https://github.com/cj-mills/pexels-dataset/raw/main/images/3185509-img-depth-pair-512p.png">
img_id | 3186010 |
title | Pink and White Ice Cream Neon Signage |
aspect_ratio | 0.749809 |
main_color | [128, 38, 77] |
colors | [#000000, #a52a2a, #bc8f8f, #c71585, #d02090, #d8bfd8] |
tags | [bright, chocolate, close-up, cold, cream, creamy, cup, dairy product, delicious, design, dessert, electricity, epicure, flavors, fluorescent, food, food photography, goody, hand, ice cream, icecream, illuminated, indulgence, light pink background, neon, neon lights, neon sign, pastry, pink background, pink wallpaper, scoop, sweet, sweets, tasty] |
adult | very_unlikely |
aperture | 1.8 |
camera | iPhone X |
focal_length | 4.0 |
google_place_id | ChIJkUjxJ7it1y0R4qOVTbWHlR4 ... |
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TwitterOverview This dataset is a collection of 100,000+ images of cars in multiple scenes that are ready to use for optimizing the accuracy of computer vision models. All of the contents is sourced from PIXTA's stock library of 100M+ Asian-featured images and videos. PIXTA is the largest platform of visual materials in the Asia Pacific region offering fully-managed services, high quality contents and data, and powerful tools for businesses & organisations to enable their creative and machine learning projects.
Annotated Imagery Data of car images This dataset contains 4,000+ images of cars. Each data set is supported by both AI and human review process to ensure labelling consistency and accuracy. Contact us for more custom datasets.
About PIXTA PIXTASTOCK is the largest Asian-featured stock platform providing data, contents, tools and services since 2005. PIXTA experiences 15 years of integrating advanced AI technology in managing, curating, processing over 100M visual materials and serving global leading brands for their creative and data demands.
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TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
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Investments Time Series for Getty Images Holdings Inc.. Getty Images Holdings, Inc. provides creative and editorial visual content solutions in the Americas, Europe, the Middle East, Africa, and Asia-Pacific. It offers creative, which includes royalty-free photos, illustrations, vectors, videos, and generative AI-services; editorial, which consists of photos and videos covering entertainment, sports, and news; and other products and services, such as music licensing, digital asset management, distribution services, print sales, and data access and/or licensing. The company also provides its stills, images, and videos through its website Gettyimages.com, which serves enterprise agency, media, and corporate customers; iStock.com, an e-commerce platform that primarily serves small and medium-sized businesses, including the freelance market; Unsplash.com, a platform that offers free stock photo downloads and paid subscriptions to high-growth prosumer and semi-professional creator segments; and Unsplash+, an unlimited paid subscription that provides access to model released content with expanded legal protections. In addition, it maintains privately-owned photographic archives covering news, sport, and entertainment, as well as variety of subjects, including lifestyle, business, science, health, wellness, beauty, sports, transportation, and travel. The company was founded in 1995 and is headquartered in Seattle, Washington.
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Twitterhttps://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
This dataset was created by Prateek
Released under CC0: Public Domain
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Twitterunography/shopify-stock-images-2048 dataset hosted on Hugging Face and contributed by the HF Datasets community
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TwitterOverview This dataset is a collection of high view traffic images in multiple scenes, backgrounds and lighting conditions that are ready to use for optimizing the accuracy of computer vision models. All of the contents is sourced from PIXTA's stock library of 100M+ Asian-featured images and videos. PIXTA is the largest platform of visual materials in the Asia Pacific region offering fully-managed services, high quality contents and data, and powerful tools for businesses & organisations to enable their creative and machine learning projects.
Use case This dataset is used for AI solutions training & testing in various cases: Traffic monitoring, Traffic camera system, Vehicle flow estimation,... Each data set is supported by both AI and human review process to ensure labelling consistency and accuracy. Contact us for more custom datasets.
About PIXTA PIXTASTOCK is the largest Asian-featured stock platform providing data, contents, tools and services since 2005. PIXTA experiences 15 years of integrating advanced AI technology in managing, curating, processing over 100M visual materials and serving global leading brands for their creative and data demands. Visit us at https://www.pixta.ai/ for more details.
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TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
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fisheries management is generally based on age structure models. thus, fish ageing data are collected by experts who analyze and interpret calcified structures (scales, vertebrae, fin rays, otoliths, etc.) according to a visual process. the otolith, in the inner ear of the fish, is the most commonly used calcified structure because it is metabolically inert and historically one of the first proxies developed. it contains information throughout the whole life of the fish and provides age structure data for stock assessments of all commercial species. the traditional human reading method to determine age is very time-consuming. automated image analysis can be a low-cost alternative method, however, the first step is the transformation of routinely taken otolith images into standardized images within a database to apply machine learning techniques on the ageing data. otolith shape, resulting from the synthesis of genetic heritage and environmental effects, is a useful tool to identify stock units, therefore a database of standardized images could be used for this aim. using the routinely measured otolith data of plaice (pleuronectes platessa; linnaeus, 1758) and striped red mullet (mullus surmuletus; linnaeus, 1758) in the eastern english channel and north-east arctic cod (gadus morhua; linnaeus, 1758), a greyscale images matrix was generated from the raw images in different formats. contour detection was then applied to identify broken otoliths, the orientation of each otolith, and the number of otoliths per image. to finalize this standardization process, all images were resized and binarized. several mathematical morphology tools were developed from these new images to align and to orient the images, placing the otoliths in the same layout for each image. for this study, we used three databases from two different laboratories using three species (cod, plaice and striped red mullet). this method was approved to these three species and could be applied for others species for age determination and stock identification.
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TwitterOverview This dataset is a collection of 10,000+ high quality images of supermarket & store display shelves that are ready to use for optimizing the accuracy of computer vision models. All of the contents is sourced from PIXTA's stock library of 100M+ Asian-featured images and videos. PIXTA is the largest platform of visual materials in the Asia Pacific region offering fully-managed services, high quality contents and data, and powerful tools for businesses & organisations to enable their creative and machine learning projects.
Use case The dataset could be used for various AI & Computer Vision models: Store Management, Stock Monitoring, Customer Experience, Sales Analysis, Cashierless Checkout,... Each data set is supported by both AI and human review process to ensure labelling consistency and accuracy. Contact us for more custom datasets.
About PIXTA PIXTASTOCK is the largest Asian-featured stock platform providing data, contents, tools and services since 2005. PIXTA experiences 15 years of integrating advanced AI technology in managing, curating, processing over 100M visual materials and serving global leading brands for their creative and data demands. Visit us at https://www.pixta.ai/ or contact via our email admin.bi@pixta.co.jp.
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TwitterMIT Licensehttps://opensource.org/licenses/MIT
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Stock Charts
This dataset is a collection of a sample of images from tweets that I scraped using my Discord bot that keeps track of financial influencers on Twitter. The data consists of images that were part of tweets that mentioned a stock. This dataset can be used for a wide variety of tasks, such as image classification or feature extraction.
FinTwit Charts Collection
This dataset is part of a larger collection of datasets, scraped from Twitter and labeled by a… See the full description on the dataset page: https://huggingface.co/datasets/StephanAkkerman/stock-charts.
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TwitterOverview This dataset is a collection of 6,000+ images of mixed race human face with various expressions & emotions that are ready to use for optimizing the accuracy of computer vision models. All of the contents is sourced from PIXTA's stock library of 100M+ Asian-featured images and videos. PIXTA is the largest platform of visual materials in the Asia Pacific region offering fully-managed services, high quality contents and data, and powerful tools for businesses & organisations to enable their creative and machine learning projects.
The data set This dataset contains 6,000+ images of face emotion. Each data set is supported by both AI and human review process to ensure labelling consistency and accuracy. Contact us for more custom datasets.
About PIXTA PIXTASTOCK is the largest Asian-featured stock platform providing data, contents, tools and services since 2005. PIXTA experiences 15 years of integrating advanced AI technology in managing, curating, processing over 100M visual materials and serving global leading brands for their creative and data demands. Visit us at https://www.pixta.ai/ or contact via our email contact@pixta.ai."
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TwitterCC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
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According to INSPIRE transformed development plan “picture stock change” of the municipality of Inzigkofen based on an XPlanung dataset in version 5.0.
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TwitterCC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
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The development plan (BPL) contains the legally binding determinations for the urban planning order. In principle, the development plan must be developed from the land use plan. The available data is the development plan “Bildstock” of the municipality of Inzigkofen from XPlanung 5.0. Description: Picture stick.
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TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
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## Overview
Stock Chart is a dataset for object detection tasks - it contains Stocks annotations for 80 images.
## Getting Started
You can download this dataset for use within your own projects, or fork it into a workspace on Roboflow to create your own model.
## License
This dataset is available under the [CC BY 4.0 license](https://creativecommons.org/licenses/CC BY 4.0).
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TwitterAngle: no more than 90 degree All of the contents is sourced from PIXTA's stock library of 100M+ Asian-featured images and videos.
Annotated Imagery Data of Face ID + 106 key points facial landmark This dataset contains 30,000+ images of Face ID + 106 key points facial landmark. The dataset has been annotated in - face bounding box, Attribute of race, gender, age, skin tone and 106 keypoints facial landmark. Each data set is supported by both AI and human review process to ensure labelling consistency and accuracy.
About PIXTA PIXTASTOCK is the largest Asian-featured stock platform providing data, contents, tools and services since 2005. PIXTA experiences 15 years of integrating advanced AI technology in managing, curating, processing over 100M visual materials and serving global leading brands for their creative and data demands.
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TwitterAttribution-NonCommercial 4.0 (CC BY-NC 4.0)https://creativecommons.org/licenses/by-nc/4.0/
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We propose Safe Human dataset consisting of 17 different objects referred to as SH17 dataset. We scrapped images from the Pexels website, which offers clear usage rights for all its images, showcasing a range of human activities across diverse industrial operations.
To extract relevant images, we used multiple queries such as manufacturing worker, industrial worker, human worker, labor, etc. The tags associated with Pexels images proved reasonably accurate. After removing duplicate samples, we obtained a dataset of 8,099 images. The dataset exhibits significant diversity, representing manufacturing environments globally, thus minimizing potential regional or racial biases. Samples of the dataset are shown below.
Key features
Collected from diverse industrial environments globally
High quality images (max resolution 8192x5462, min 1920x1002)
Average of 9.38 instances per image
Includes small objects like ears and earmuffs (39,764 annotations < 1% image area, 59,025 annotations < 5% area)
Classes
Person
Head
Face
Glasses
Face-mask-medical
Face-guard
Ear
Earmuffs
Hands
Gloves
Foot
Shoes
Safety-vest
Tools
Helmet
Medical-suit
Safety-suit
The data consists of three folders,
images contains all images
labels contains labels in YOLO format for all images
voc_labels contains labels in VOC format for all images
train_files.txt contains list of all images we used for training
val_files.txt contains list of all images we used for validation
Disclaimer and Responsible Use:
This dataset, scrapped through the Pexels website, is intended for educational, research, and analysis purposes only. You may be able to use the data for training of the Machine learning models only. Users are urged to use this data responsibly, ethically, and within the bounds of legal stipulations.
Users should adhere to Copyright Notice of Pexels when utilizing this dataset.
Legal Simplicity: All photos and videos on Pexels can be downloaded and used for free.
Allowed 👌
All photos and videos on Pexels are free to use.
Attribution is not required. Giving credit to the photographer or Pexels is not necessary but always appreciated.
You can modify the photos and videos from Pexels. Be creative and edit them as you like.
Not allowed 👎
Identifiable people may not appear in a bad light or in a way that is offensive.
Don't sell unaltered copies of a photo or video, e.g. as a poster, print or on a physical product without modifying it first.
Don't imply endorsement of your product by people or brands on the imagery.
Don't redistribute or sell the photos and videos on other stock photo or wallpaper platforms.
Don't use the photos or videos as part of your trade-mark, design-mark, trade-name, business name or service mark.
No Warranty Disclaimer:
The dataset is provided "as is," without warranty, and the creator disclaims any legal liability for its use by others.
Ethical Use:
Users are encouraged to consider the ethical implications of their analyses and the potential impact on broader community.
GitHub Page:
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Twitterhttps://www.datainsightsmarket.com/privacy-policyhttps://www.datainsightsmarket.com/privacy-policy
Discover the booming stock footage market! This in-depth analysis reveals key trends, growth drivers, and challenges for 2025-2033, profiling major players like Shutterstock, Getty Images, and Adobe Stock. Learn about market size, CAGR, and regional insights to make informed business decisions.
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TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
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Preferred-Stock-and-Other-Adjustments Time Series for MD Pictures Tbk PT. PT.MD Entertainment Tbk produces, trades in, and distributes films and videos in Indonesia. The company is involved in the studio rental and shooting equipment rental activities, as well as operates studio production house. It also engages in printing and publishing of books, magazines and general trading and services business. In addition, the company is involved in television broadcasting activities. PT.MD Entertainment Tbk was formerly known as PT MD Pictures Tbk and changed its name to PT.MD Entertainment Tbk in July 2024. The company was founded in 2002 and is headquartered in South Jakarta, Indonesia.
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We matched forest plot data from Forest Inventory and Analysis (FIA) to a 30x30 meter (m) grid. TreeMap 2016 is being used in both the private and public sectors for projects including fuel treatment planning, snag hazard mapping, and estimation of terrestrial carbon resources. We used a random forests machine-learning algorithm to impute the forest plot data to a set of target rasters provided by Landscape Fire and Resource Management Planning Tools (LANDFIRE: https://landfire.gov). Predictor variables consisted of percent forest cover, height, and vegetation type, as well as topography (slope, elevation, and aspect), location (latitude and longitude), biophysical variables (photosynthetically active radiation, precipitation, maximum temperature, minimum temperature, relative humidity, and vapour pressure deficit), and disturbance history (time since disturbance and disturbance type) for the landscape circa 2016. The main output of this project (the GeoTIFF included in this data publication) is a raster map of imputed plot identifiers at 30X30 m spatial resolution for the conterminous U.S. for landscape conditions circa 2016. In the attribute table of this raster, we also present a set of attributes drawn from the FIA databases, including forest type and live basal area. The raster map of plot identifiers can be linked to the FIA databases available through the FIA DataMart (https://doi.org/10.2737/RDS-2001-FIADB). The dataset has been validated for applications including percent live tree cover, height of the dominant trees, forest type, species of trees with most basal area, aboveground biomass, fuel treatment planning, and snag hazard. Application of the dataset to research questions other than those for which it has been validated should be investigated by the researcher before proceeding. The dataset may be suitable for other applications and for use across various scales (stand, landscape, and region), however, the researcher should test the dataset's applicability to a particular research question before proceeding.
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Twitterunography/stock-images-bg-removed-10k-v2 dataset hosted on Hugging Face and contributed by the HF Datasets community
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TwitterApache License, v2.0https://www.apache.org/licenses/LICENSE-2.0
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This dataset was meticulously curated by scraping image data from the website Stockmages. It encompasses a comprehensive collection of metadata for a total of 9,101 images. Each entry in the dataset includes key attributes such as the image link, associated tags, the number of likes, and the number of comments. This dataset is ideal for projects involving image analysis, metadata exploration, or sentiment trends in user interactions.