RSB-Pose: Robust Short-Baseline Binocular 3D Human Pose Estimation With Occlusion Handling

Xiaoyue Wan;Zhuo Chen;Xu Zhao
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Abstract

In the domain of 3D Human Pose Estimation, which finds widespread daily applications, the requirement for convenient acquisition equipment continues to grow. To satisfy this demand, we focus on a short-baseline binocular setup that offers both portability and a geometric measurement capability that significantly reduces depth ambiguity. However, as the binocular baseline shortens, two serious challenges emerge: first, the robustness of 3D reconstruction against 2D errors deteriorates; second, occlusion reoccurs frequently due to the limited visual differences between two views. To address the first challenge, we propose the Stereo Co-Keypoints Estimation module to improve the view consistency of 2D keypoints and enhance the 3D robustness. In this module, the disparity is utilized to represent the correspondence of binocular 2D points, and the Stereo Volume Feature (SVF) is introduced to contain binocular features across different disparities. Through the regression of SVF, two-view 2D keypoints are simultaneously estimated in a collaborative way which restricts their view consistency. Furthermore, to deal with occlusions, a Pre-trained Pose Transformer module is introduced. Through this module, 3D poses are refined by perceiving pose coherence, a representation of joint correlations. This perception is injected by the Pose Transformer network and learned through a pre-training task that recovers iterative masked joints. Comprehensive experiments on H36M and MHAD datasets validate the effectiveness of our approach in the short-baseline binocular 3D Human Pose Estimation and occlusion handling.
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RSB-Pose:鲁棒短基线双目三维人体姿态估计与遮挡处理
在日常应用广泛的三维人体姿态估计领域,对方便的采集设备的需求不断增长。为了满足这一需求,我们专注于短基线双目设置,提供便携性和几何测量能力,显着减少深度模糊。然而,随着双眼基线的缩短,出现了两个严峻的挑战:一是三维重建对二维误差的鲁棒性下降;其次,由于两个视图之间的视觉差异有限,遮挡经常再次发生。为了解决第一个问题,我们提出了立体协同关键点估计模块,以提高二维关键点的视图一致性和增强三维鲁棒性。该模块利用视差来表示双目二维点的对应关系,并引入立体体积特征(SVF)来包含不同视差间的双目特征。通过SVF的回归,以一种协同的方式同时估计两视图二维关键点,但限制了它们的视图一致性。此外,为了处理遮挡,引入了预训练的Pose Transformer模块。通过该模块,通过感知姿态一致性(关节相关性的一种表示)来改进3D姿态。这种感知是由Pose Transformer网络注入的,并通过恢复迭代掩蔽关节的预训练任务来学习。在H36M和MHAD数据集上的综合实验验证了我们的方法在短基线双目三维人体姿态估计和遮挡处理中的有效性。
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