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PARE: Part Attention Regressor for 3D Human Body Estimation

Muhammed Kocabas, Chun-Hao P. Huang, Otmar Hilliges, Michael J. Black

20212021 IEEE/CVF International Conference on Computer Vision (ICCV)16 citationsDOIOpen Access PDF

Abstract

Despite significant progress, we show that state of the art 3D human pose and shape estimation methods remain sensitive to partial occlusion and can produce dramatically wrong predictions although much of the body is observable. To address this, we introduce a soft attention mechanism, called the Part Attention REgressor (PARE), that learns to predict body-part-guided attention masks. We observe that state-of-the-art methods rely on global feature representations, making them sensitive to even small occlusions. In contrast, PARE’s part-guided attention mechanism overcomes these issues by exploiting information about the visibility of individual body parts while leveraging information from neighboring body-parts to predict occluded parts. We show qualitatively that PARE learns sensible attention masks, and quantitative evaluation confirms that PARE achieves more accurate and robust reconstruction results than existing approaches on both occlusion-specific and standard benchmarks. The code and data are available for research purposes at https://pare.is.tue.mpg.de/

Topics & Concepts

Computer scienceCode (set theory)VisibilityArtificial intelligenceFeature (linguistics)Contrast (vision)Machine learningMechanism (biology)Pattern recognition (psychology)Computer visionSet (abstract data type)EpistemologyProgramming languageLinguisticsPhysicsOpticsPhilosophyHuman Pose and Action Recognition3D Shape Modeling and AnalysisDiabetic Foot Ulcer Assessment and Management
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