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We propose a novel approach for human pose estimation in real-world cluttered scenes, and focus on the challenging problem of predicting the pose of both arms for each person in the image. For this purpose, we build on the notion of poselets 4 and train highly discriminative classifiers to differentiate among arm configurations, which we call armlets. We propose a rich representation which, in addition to standard HOG features, integrates the information of strong contours, skin color and contextual cues in a principled manner. Unlike existing methods, we evaluate our approach on a large subset of images from the PASCAL VOC detection dataset, where critical visual phenomena, such as occlusion, truncation, multiple instances and clutter are the norm. Our approach outperforms Yang and Ramanan 26, the state-of-the-art technique, with an improvement from 29.0% to 37.5% PCP accuracy on the arm keypoint prediction task, on this new pose estimation dataset.
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Georgia Gkioxari
California Institute of Technology
Pablo Arbeláez
Artificial Intelligence in Medicine (Canada)
Lubomir Bourdev
West Africa Vocational Education
University of California, Berkeley
Menlo School
Meta (United States)
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Gkioxari et al. (Sat,) studied this question.
synapsesocial.com/papers/6a090fcc57846b5001d39e56 — DOI: https://doi.org/10.1109/cvpr.2013.429