Archive/Context-Aware Human Pose Estimation via Hierarchical Information Arbitration
Context-Aware Human Pose Estimation via Hierarchical Information Arbitration
Jiayuan Wang, Jie Lv, Xiaoru Chen et al.
20 mai 2026
en

Abstract

Human pose estimation requires accurate localization of body keypoints under complex backgrounds, occlusion, and diverse human postures. Existing high-resolution pose-estimation networks preserve spatial details effectively, but their static information flow limits their adaptability to different image contexts. To address this limitation, this paper proposes a context-aware hierarchical information arbitration method that dynamically regulates feature interaction at both multi-resolution fusion and residual feature refinement levels. The proposed method achieves superior performance on COCO, reaching 77.0 average precision and improving the High-Resolution Network baseline by 3.6 percentage points, with only a minor increase in model parameters. These results demonstrate that adaptive information arbitration improves pose-estimation accuracy and robustness while maintaining computational efficiency.

IPC Classification

G06H04

Keywords

context-awarehumanposeestimationhierarchicalinformationarbitrationelectronicsrequiresaccuratelocalizationbodykeypointscomplexbackgroundsocclusiondiverseposturesexistinghigh-resolutionpose-estimationnetworkspreservespatial
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