PointHPS: Cascaded 3D Human Pose and Shape Estimation from Point Clouds
Zhongang Cai, Liang Pan, Chen Wei, Wanqi Yin, Fangzhou Hong, Mingyuan, Zhang, Chen Change Loy, Lei Yang, Ziwei Liu

TL;DR
PointHPS introduces a cascaded framework for accurate 3D human pose and shape estimation from noisy, incomplete point clouds, utilizing novel modules for multi-scale feature fusion and body-aware enhancement, outperforming existing methods.
Contribution
The paper proposes a new cascaded architecture with two novel modules, CFF and IFE, for improved 3D human pose and shape estimation from point clouds in real-world scenarios.
Findings
Outperforms state-of-the-art methods on large-scale benchmarks.
Effectively handles noisy and incomplete point cloud data.
Demonstrates robustness across diverse subjects and actions.
Abstract
Human pose and shape estimation (HPS) has attracted increasing attention in recent years. While most existing studies focus on HPS from 2D images or videos with inherent depth ambiguity, there are surging need to investigate HPS from 3D point clouds as depth sensors have been frequently employed in commercial devices. However, real-world sensory 3D points are usually noisy and incomplete, and also human bodies could have different poses of high diversity. To tackle these challenges, we propose a principled framework, PointHPS, for accurate 3D HPS from point clouds captured in real-world settings, which iteratively refines point features through a cascaded architecture. Specifically, each stage of PointHPS performs a series of downsampling and upsampling operations to extract and collate both local and global cues, which are further enhanced by two novel modules: 1) Cross-stage Feature…
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Taxonomy
TopicsHuman Pose and Action Recognition · Video Surveillance and Tracking Methods · Infrared Thermography in Medicine
MethodsFocus
