CHASE: Learning Convex Hull Adaptive Shift for Skeleton-based Multi-Entity Action Recognition
Yuhang Wen, Mengyuan Liu, Songtao Wu, Beichen Ding

TL;DR
CHASE introduces a novel adaptive shift method using convex hull constraints to align skeleton-based multi-entity actions, effectively reducing distribution gaps among entities and enhancing recognition accuracy across multiple datasets.
Contribution
The paper proposes CHASE, a convex hull adaptive shift technique that mitigates inter-entity distribution discrepancies in skeleton-based multi-entity action recognition, improving backbone performance.
Findings
Consistently improves multi-entity action recognition across six datasets.
Effectively reduces inter-entity distribution gaps.
Operates as a sample-adaptive normalization method.
Abstract
Skeleton-based multi-entity action recognition is a challenging task aiming to identify interactive actions or group activities involving multiple diverse entities. Existing models for individuals often fall short in this task due to the inherent distribution discrepancies among entity skeletons, leading to suboptimal backbone optimization. To this end, we introduce a Convex Hull Adaptive Shift based multi-Entity action recognition method (CHASE), which mitigates inter-entity distribution gaps and unbiases subsequent backbones. Specifically, CHASE comprises a learnable parameterized network and an auxiliary objective. The parameterized network achieves plausible, sample-adaptive repositioning of skeleton sequences through two key components. First, the Implicit Convex Hull Constrained Adaptive Shift ensures that the new origin of the coordinate system is within the skeleton convex hull.…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Human Pose and Action Recognition · Network Security and Intrusion Detection
