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Semantic Part Segmentation using Compositional Model combining Shape and Appearance

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In this paper, we study the problem of semantic part segmentation for animals. This is more challenging than standard object detection, object segmentation and pose estimation tasks because semantic parts of animals often have similar appearance and highly varying shapes. To tackle these challenges, we build a mixture of compositional models to represent the object boundary and the boundaries of semantic parts. And we incorporate edge, appearance, and semantic part cues into the compositional model. Given part-level segmentation annotation, we develop a novel algorithm to learn a mixture of compositional models under various poses and viewpoints for certain animal classes. Furthermore, a linear complexity algorithm is offered for efficient inference of the compositional model using dynamic programming. We evaluate our method for horse and cow using a newly annotated dataset on Pascal VOC 2010 which has pixelwise part labels. Experimental results demonstrate the effectiveness of our method.

Jianyu Wang, Alan Yuille• 2014

Related benchmarks

TaskDatasetResultRank
Semantic Part SegmentationHorse-Cow Horse (test)
Bkg Accuracy79.14
11
Semantic Part SegmentationHorse-Cow Cow (test)
Bkg Score78
11
Semantic Part SegmentationPASCAL-Parts (horse)
Head47.21
5
Semantic Part SegmentationPASCAL-Parts cow
Head Score41.55
5
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