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Recovering human body configurations: Combining segmentation and recognition (2004)

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by Greg Mori , Xiaofeng Ren , Alexei A. Efros , Jitendra Malik
Venue:In CVPR
Citations:112 - 8 self
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BibTeX

@INPROCEEDINGS{Mori04recoveringhuman,
    author = {Greg Mori and Xiaofeng Ren and Alexei A. Efros and Jitendra Malik},
    title = {Recovering human body configurations: Combining segmentation and recognition},
    booktitle = {In CVPR},
    year = {2004},
    pages = {326--333}
}

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Abstract

localized joints and limbs. (c) Segmentation mask associated with human figure. The goal of this work is to take an image such as the one in Figure 1(a), detect a human figure, and localize his joints and limbs (b) along with their associated pixel masks (c). In this work we attempt to tackle this problem in a general setting. The dataset we use is a collection of sports news photographs of baseball players, varying dramatically in pose and clothing. The approach that we take is to use segmentation to guide our recognition algorithm to salient bits of the image. We use this segmentation approach to build limb and torso detectors, the outputs of which are assembled into human figures. We present quantitative results on torso localization, in addition to shortlisted full body configurations. 1.

Citations

2960 Artificial Intelligence: A Modern Approach. 2nd edn - Russell, Norvig - 2003
456 The visual analysis of human movement: A survey, Computer Vision and Image Understanding (CVIU - Gavrila
246 Detecting pedestrians using patterns of motion and appearance - Viola, Jones, et al. - 2003
234 Contour and texture analysis for image segmentation - Malik, Belongie, et al. - 2001
193 Model-based vision: A program to see a walking person - Hogg - 1983
186 Example-based object detection in images by components - Mohan, Papageorgiou, et al. - 2001
168 Context-based vision system for place and object recognition - Torralba, Murphy, et al. - 2003
114 Efficient matching of pictorial structures - Felzenszwalb, Huttenlocher - 2000
104 Estimating human body configurations using shape context matching - Mori, Malik - 2002
100 Learning a classification model for segmentation - Ren, Malik - 2003
77 Probabilistic methods for finding people - Ioffe, Forsyth
73 Fast pose estimation with parameter sensitive hashing - Shakhnarovich, Viola, et al. - 2003
63 Recognizing and tracking human action - Sullivan, Carlsson - 2002
54 Unsupervised learning of human motion - Song, Goncalves, et al.
33 Object-specific figure-ground segregation - Yu, Shi - 2003
12 Probabilistic exemplar-based tracking in a metric space - Toyama, Blake - 2001
11 Learning to find brightness and texture boundaries in natural images - Martin, Fowlkes, et al.
11 Image parsing: segmentation, detection, and recognition - Tu, Chen, et al. - 2003
5 Anthrokids - anthropometric data of children - NIST - 1977
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