6 datasets found
  1. a

    PASCAL Visual Object Classes Challenge 2010 (VOC2010) Complete Dataset

    • academictorrents.com
    bittorrent
    Updated Dec 1, 2015
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    Everingham, M. and Van~Gool, L. and Williams, C. K. I. and Winn, J. and Zisserman, A. (2015). PASCAL Visual Object Classes Challenge 2010 (VOC2010) Complete Dataset [Dataset]. https://academictorrents.com/details/96db21675f464480780637f1416477ac14a81107
    Explore at:
    bittorrent(1345332224)Available download formats
    Dataset updated
    Dec 1, 2015
    Dataset authored and provided by
    Everingham, M. and Van~Gool, L. and Williams, C. K. I. and Winn, J. and Zisserman, A.
    License

    https://academictorrents.com/nolicensespecifiedhttps://academictorrents.com/nolicensespecified

    Description

    Introduction The goal of this challenge is to recognize objects from a number of visual object classes in realistic scenes (i.e. not pre-segmented objects). It is fundamentally a supervised learning learning problem in that a training set of labelled images is provided. The twenty object classes that have been selected are: Person: person Animal: bird, cat, cow, dog, horse, sheep Vehicle: aeroplane, bicycle, boat, bus, car, motorbike, train Indoor: bottle, chair, dining table, potted plant, sofa, tv/monitor Data To download the training/validation data, see the development kit. The training data provided consists of a set of images; each image has an annotation file giving a bounding box and object class label for each object in one of the twenty classes present in the image. Note that multiple objects from multiple classes may be present in the same image. Some example images can be viewed online. A subset of images are also annotated with pixel-wise segmentation of each object presen

  2. a

    PASCAL Visual Object Classes Challenge 2011 (VOC2011) Complete Dataset

    • academictorrents.com
    bittorrent
    Updated Dec 1, 2015
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    Everingham, M. and Van~Gool, L. and Williams, C. K. I. and Winn, J. and Zisserman, A. (2015). PASCAL Visual Object Classes Challenge 2011 (VOC2011) Complete Dataset [Dataset]. https://academictorrents.com/details/408e318ba27031a533c709b7d696e34637bcfc0e
    Explore at:
    bittorrent(1771402240)Available download formats
    Dataset updated
    Dec 1, 2015
    Dataset authored and provided by
    Everingham, M. and Van~Gool, L. and Williams, C. K. I. and Winn, J. and Zisserman, A.
    License

    https://academictorrents.com/nolicensespecifiedhttps://academictorrents.com/nolicensespecified

    Description

    Introduction The goal of this challenge is to recognize objects from a number of visual object classes in realistic scenes (i.e. not pre-segmented objects). It is fundamentally a supervised learning learning problem in that a training set of labelled images is provided. The twenty object classes that have been selected are: Person: person Animal: bird, cat, cow, dog, horse, sheep Vehicle: aeroplane, bicycle, boat, bus, car, motorbike, train Indoor: bottle, chair, dining table, potted plant, sofa, tv/monitor Data To download the training/validation data, see the development kit. The training data provided consists of a set of images; each image has an annotation file giving a bounding box and object class label for each object in one of the twenty classes present in the image. Note that multiple objects from multiple classes may be present in the same image. Some example images can be viewed online. A subset of images are also annotated with pixel-wise segmentation of each object presen

  3. a

    PASCAL Visual Object Classes Challenge 2007 (VOC2007) Complete Dataset

    • academictorrents.com
    bittorrent
    Updated Dec 1, 2015
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    Everingham, M. and Van~Gool, L. and Williams, C. K. I. and Winn, J. and Zisserman, A. (2015). PASCAL Visual Object Classes Challenge 2007 (VOC2007) Complete Dataset [Dataset]. https://academictorrents.com/details/c9db37df1eb2e549220dc19f70f60f7786d067d4
    Explore at:
    bittorrent(923801600)Available download formats
    Dataset updated
    Dec 1, 2015
    Dataset authored and provided by
    Everingham, M. and Van~Gool, L. and Williams, C. K. I. and Winn, J. and Zisserman, A.
    License

    https://academictorrents.com/nolicensespecifiedhttps://academictorrents.com/nolicensespecified

    Description

    ==Introduction The goal of this challenge is to recognize objects from a number of visual object classes in realistic scenes (i.e. not pre-segmented objects). It is fundamentally a supervised learning learning problem in that a training set of labelled images is provided. The twenty object classes that have been selected are: Person: person Animal: bird, cat, cow, dog, horse, sheep Vehicle: aeroplane, bicycle, boat, bus, car, motorbike, train Indoor: bottle, chair, dining table, potted plant, sofa, tv/monitor There will be two main competitions, and two smaller scale "taster" competitions.

  4. a

    PASCAL Visual Object Classes Challenge 2007 (VOC2007)...

    • academictorrents.com
    bittorrent
    Updated Mar 22, 2018
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    Everingham, M. and Van~Gool, L. and Williams, C. K. I. and Winn, J. and Zisserman, A. (2018). PASCAL Visual Object Classes Challenge 2007 (VOC2007) VOCtest_06-Nov-2007.tar [Dataset]. https://academictorrents.com/details/7b387c8154f9cc3f106e5bb4932fd7d8c7728129
    Explore at:
    bittorrent(451020800)Available download formats
    Dataset updated
    Mar 22, 2018
    Dataset authored and provided by
    Everingham, M. and Van~Gool, L. and Williams, C. K. I. and Winn, J. and Zisserman, A.
    License

    https://academictorrents.com/nolicensespecifiedhttps://academictorrents.com/nolicensespecified

    Description

    ==Introduction The goal of this challenge is to recognize objects from a number of visual object classes in realistic scenes (i.e. not pre-segmented objects). It is fundamentally a supervised learning learning problem in that a training set of labelled images is provided. The twenty object classes that have been selected are: Person: person Animal: bird, cat, cow, dog, horse, sheep Vehicle: aeroplane, bicycle, boat, bus, car, motorbike, train Indoor: bottle, chair, dining table, potted plant, sofa, tv/monitor There will be two main competitions, and two smaller scale "taster" competitions.

  5. a

    PASCAL Visual Object Classes Challenge 2009 (VOC2009) Complete Dataset

    • academictorrents.com
    bittorrent
    Updated Dec 1, 2015
    Share
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    Everingham, M. and Van~Gool, L. and Williams, C. K. I. and Winn, J. and Zisserman, A. (2015). PASCAL Visual Object Classes Challenge 2009 (VOC2009) Complete Dataset [Dataset]. https://academictorrents.com/details/e2209d95a13d364aad0811eacbf391a10c37d963
    Explore at:
    bittorrent(935792128)Available download formats
    Dataset updated
    Dec 1, 2015
    Dataset authored and provided by
    Everingham, M. and Van~Gool, L. and Williams, C. K. I. and Winn, J. and Zisserman, A.
    License

    https://academictorrents.com/nolicensespecifiedhttps://academictorrents.com/nolicensespecified

    Description

    Introduction The goal of this challenge is to recognize objects from a number of visual object classes in realistic scenes (i.e. not pre-segmented objects). It is fundamentally a supervised learning learning problem in that a training set of labelled images is provided. The twenty object classes that have been selected are: Person: person Animal: bird, cat, cow, dog, horse, sheep Vehicle: aeroplane, bicycle, boat, bus, car, motorbike, train Indoor: bottle, chair, dining table, potted plant, sofa, tv/monitor Data To download the training/validation data, see the development kit. The training data provided consists of a set of images; each image has an annotation file giving a bounding box and object class label for each object in one of the twenty classes present in the image. Note that multiple objects from multiple classes may be present in the same image. Some example images can be viewed online. A subset of images are also annotated with pixel-wise segmentation of each object presen

  6. a

    PASCAL Visual Object Classes Challenge 2012 (VOC2012) Complete Dataset

    • academictorrents.com
    bittorrent
    Updated Dec 1, 2015
    Share
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    Everingham, M. and Van~Gool, L. and Williams, C. K. I. and Winn, J. and Zisserman, A. (2015). PASCAL Visual Object Classes Challenge 2012 (VOC2012) Complete Dataset [Dataset]. https://academictorrents.com/details/f6ddac36ac7ae2ef79dc72a26a065b803c9c7230
    Explore at:
    bittorrent(2000150528)Available download formats
    Dataset updated
    Dec 1, 2015
    Dataset authored and provided by
    Everingham, M. and Van~Gool, L. and Williams, C. K. I. and Winn, J. and Zisserman, A.
    License

    https://academictorrents.com/nolicensespecifiedhttps://academictorrents.com/nolicensespecified

    Description

    Introduction The main goal of this challenge is to recognize objects from a number of visual object classes in realistic scenes (i.e. not pre-segmented objects). It is fundamentally a supervised learning learning problem in that a training set of labelled images is provided. The twenty object classes that have been selected are: Person: person Animal: bird, cat, cow, dog, horse, sheep Vehicle: aeroplane, bicycle, boat, bus, car, motorbike, train Indoor: bottle, chair, dining table, potted plant, sofa, tv/monitor Data To download the training/validation data, see the development kit. The training data provided consists of a set of images; each image has an annotation file giving a bounding box and object class label for each object in one of the twenty classes present in the image. Note that multiple objects from multiple classes may be present in the same image. Annotation was performed according to a set of guidelines distributed to all annotators. A subset of images are also annotate

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Everingham, M. and Van~Gool, L. and Williams, C. K. I. and Winn, J. and Zisserman, A. (2015). PASCAL Visual Object Classes Challenge 2010 (VOC2010) Complete Dataset [Dataset]. https://academictorrents.com/details/96db21675f464480780637f1416477ac14a81107

PASCAL Visual Object Classes Challenge 2010 (VOC2010) Complete Dataset

Explore at:
bittorrent(1345332224)Available download formats
Dataset updated
Dec 1, 2015
Dataset authored and provided by
Everingham, M. and Van~Gool, L. and Williams, C. K. I. and Winn, J. and Zisserman, A.
License

https://academictorrents.com/nolicensespecifiedhttps://academictorrents.com/nolicensespecified

Description

Introduction The goal of this challenge is to recognize objects from a number of visual object classes in realistic scenes (i.e. not pre-segmented objects). It is fundamentally a supervised learning learning problem in that a training set of labelled images is provided. The twenty object classes that have been selected are: Person: person Animal: bird, cat, cow, dog, horse, sheep Vehicle: aeroplane, bicycle, boat, bus, car, motorbike, train Indoor: bottle, chair, dining table, potted plant, sofa, tv/monitor Data To download the training/validation data, see the development kit. The training data provided consists of a set of images; each image has an annotation file giving a bounding box and object class label for each object in one of the twenty classes present in the image. Note that multiple objects from multiple classes may be present in the same image. Some example images can be viewed online. A subset of images are also annotated with pixel-wise segmentation of each object presen

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