CVAIMar 6, 2023

EvHandPose: Event-based 3D Hand Pose Estimation with Sparse Supervision

arXiv:2303.02862v322 citationsh-index: 53
Originality Highly original
AI Analysis

This work solves the problem of robust hand pose estimation in dynamic environments for applications like gesture recognition, though it is incremental with novel representations and constraints.

The paper tackles 3D hand pose estimation using event cameras by addressing motion ambiguity and sparse annotation, resulting in a method that outperforms previous event-based approaches and shows high accuracy in fast motion and challenging lighting conditions.

Event camera shows great potential in 3D hand pose estimation, especially addressing the challenges of fast motion and high dynamic range in a low-power way. However, due to the asynchronous differential imaging mechanism, it is challenging to design event representation to encode hand motion information especially when the hands are not moving (causing motion ambiguity), and it is infeasible to fully annotate the temporally dense event stream. In this paper, we propose EvHandPose with novel hand flow representations in Event-to-Pose module for accurate hand pose estimation and alleviating the motion ambiguity issue. To solve the problem under sparse annotation, we design contrast maximization and hand-edge constraints in Pose-to-IWE (Image with Warped Events) module and formulate EvHandPose in a weakly-supervision framework. We further build EvRealHands, the first large-scale real-world event-based hand pose dataset on several challenging scenes to bridge the real-synthetic domain gap. Experiments on EvRealHands demonstrate that EvHandPose outperforms previous event-based methods under all evaluation scenes, achieves accurate and stable hand pose estimation with high temporal resolution in fast motion and strong light scenes compared with RGB-based methods, generalizes well to outdoor scenes and another type of event camera, and shows the potential for the hand gesture recognition task.

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