XPose: eXplainable Human Pose Estimation
Luyu Qiu, Jianing Li, Lei Wen, Chi Su, Fei Hao, Chen Jason Zhang and, Lei Chen

TL;DR
XPose introduces an explainable framework for human pose estimation that uses Group Shapley Values and a novel data augmentation technique to improve model interpretability and performance.
Contribution
The paper presents XPose, integrating XAI principles into pose estimation with Group Shapley Values and Group-based Keypoint Removal for enhanced transparency and accuracy.
Findings
GKR improves pose estimation accuracy across multiple models.
GSV provides detailed insights into keypoint contributions.
XPose enhances model interpretability without sacrificing performance.
Abstract
Current approaches in pose estimation primarily concentrate on enhancing model architectures, often overlooking the importance of comprehensively understanding the rationale behind model decisions. In this paper, we propose XPose, a novel framework that incorporates Explainable AI (XAI) principles into pose estimation. This integration aims to elucidate the individual contribution of each keypoint to final prediction, thereby elevating the model's transparency and interpretability. Conventional XAI techniques have predominantly addressed tasks with single-target tasks like classification. Additionally, the application of Shapley value, a common measure in XAI, to pose estimation has been hindered by prohibitive computational demands. To address these challenges, this work introduces an innovative concept called Group Shapley Value (GSV). This approach strategically organizes keypoints…
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Taxonomy
TopicsHuman Pose and Action Recognition · Anomaly Detection Techniques and Applications
