Parsing Occluded People

CVPR(2014)

引用 68|浏览114
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摘要
Occlusion poses a significant difficulty for object recognition due to the combinatorial diversity of possible occlusion patterns. We take a strongly supervised, non-parametric approach to modeling occlusion by learning deformable models with many local part mixture templates using large quantities of synthetically generated training data. This allows the model to learn the appearance of different occlusion patterns including figure-ground cues such as the shapes of occluding contours as well as the co-occurrence statistics of occlusion between neighboring parts. The underlying part mixture-structure also allows the model to capture coherence of object support masks between neighboring parts and make compelling predictions of figure-ground-occluder segmentations. We test the resulting model on human pose estimation under heavy occlusion and find it produces improved localization accuracy.
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关键词
local part mixture templates,statistical analysis,learning (artificial intelligence),occluded people parsing,occlusion patterns,synthetically generated training data,mixture-structure part,pose estimation,deformable model learning,combinatorial diversity,object detection,object recognition,cooccurrence statistics,figure-ground-occluder segmentations,occlusion,object detection, pose estimation, occlusion,human pose estimation,figure-ground cues,occluding contours,image segmentation,data models,estimation,computational modeling,training data,learning artificial intelligence
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