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Autori principali: Dai, Peng, Zhang, Yu, Feng, Yiqiang, Fan, Zhen, Zhang, Yang
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2602.23618
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author Dai, Peng
Zhang, Yu
Feng, Yiqiang
Fan, Zhen
Zhang, Yang
author_facet Dai, Peng
Zhang, Yu
Feng, Yiqiang
Fan, Zhen
Zhang, Yang
contents Egocentric human pose estimation (HPE) using a head-mounted device is crucial for various VR and AR applications, but it faces significant challenges due to keypoint invisibility. Nevertheless, none of the existing egocentric HPE datasets provide keypoint visibility annotations, and the existing methods often overlook the invisibility problem, treating visible and invisible keypoints indiscriminately during estimation. As a result, their capacity to accurately predict visible keypoints is compromised. In this paper, we first present Eva-3M, a large-scale egocentric visibility-aware HPE dataset comprising over 3.0M frames, with 435K of them annotated with keypoint visibility labels. Additionally, we augment the existing EMHI dataset with keypoint visibility annotations to further facilitate the research in this direction. Furthermore, we propose EvaPose, a novel egocentric visibility-aware HPE method that explicitly incorporates visibility information to enhance pose estimation accuracy. Extensive experiments validate the significant value of ground-truth visibility labels in egocentric HPE settings, and demonstrate that our EvaPose achieves state-of-the-art performance in both Eva-3M and EMHI datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2602_23618
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Egocentric Visibility-Aware Human Pose Estimation
Dai, Peng
Zhang, Yu
Feng, Yiqiang
Fan, Zhen
Zhang, Yang
Computer Vision and Pattern Recognition
Egocentric human pose estimation (HPE) using a head-mounted device is crucial for various VR and AR applications, but it faces significant challenges due to keypoint invisibility. Nevertheless, none of the existing egocentric HPE datasets provide keypoint visibility annotations, and the existing methods often overlook the invisibility problem, treating visible and invisible keypoints indiscriminately during estimation. As a result, their capacity to accurately predict visible keypoints is compromised. In this paper, we first present Eva-3M, a large-scale egocentric visibility-aware HPE dataset comprising over 3.0M frames, with 435K of them annotated with keypoint visibility labels. Additionally, we augment the existing EMHI dataset with keypoint visibility annotations to further facilitate the research in this direction. Furthermore, we propose EvaPose, a novel egocentric visibility-aware HPE method that explicitly incorporates visibility information to enhance pose estimation accuracy. Extensive experiments validate the significant value of ground-truth visibility labels in egocentric HPE settings, and demonstrate that our EvaPose achieves state-of-the-art performance in both Eva-3M and EMHI datasets.
title Egocentric Visibility-Aware Human Pose Estimation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2602.23618