Occlusion-Robust 3D Hand Pose Estimation from a Single RGB Image

Asuka Ishii, Gaku Nakano, Tetsuo Inoshita
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Abstract

We propose an occlusion-robust network for 3D hand pose estimation from a single RGB image. Severe occlusions degrade the estimation accuracy of not only occluded keypoints but also visible keypoints. Since the existing methods based on a deep neural network perform convolutions on all keypoints regardless of visibility, inaccurate features from occluded keypoints affect the localization of visible keypoints. To suppress the influence of occluded keypoints, our proposed deep neural network consists of three modules: a 2D heatmap generator, parallel sub-joints network (PSJNet), and an ensemble network (EN). First, the 2D position of all keypoints in an input image is predicted as a 2D heatmap, similar to the existing methods. Then, PSJNet, which consists of several graph convolutional networks (GCN) in parallel, estimates multiple incomplete 3D poses in which some of the keypoints have been removed. Each GCN performs convolutions on a limited number of keypoints, therefore, features from occluded keypoints do not spread to the whole pose. Finally, EN merges the incomplete poses into a single 3D pose by selecting accurate positions from them. Experimental results on a public dataset RHD demonstrate that the proposed method outperforms the existing methods in the case of both small and severe occlusions.
从单个RGB图像进行遮挡-鲁棒3D手部姿态估计
我们提出了一个遮挡鲁棒网络,用于从单个RGB图像估计3D手部姿势。严重遮挡不仅降低了被遮挡关键点的估计精度,而且降低了可见关键点的估计精度。由于现有的基于深度神经网络的方法对所有关键点进行卷积而不考虑可见性,遮挡关键点的不准确特征会影响可见关键点的定位。为了抑制关键点遮挡的影响,我们提出的深度神经网络由三个模块组成:二维热图生成器、平行子节点网络(PSJNet)和集成网络(EN)。首先,与现有方法类似,将输入图像中所有关键点的2D位置预测为2D热图。然后,由多个并行图卷积网络(GCN)组成的PSJNet估计多个不完整的3D姿势,其中一些关键点已被删除。每个GCN在有限数量的关键点上执行卷积,因此,遮挡关键点的特征不会扩散到整个姿势。最后,EN通过从中选择准确的位置,将不完整的姿势合并为单个3D姿势。在公共数据集RHD上的实验结果表明,该方法在小闭塞和严重闭塞情况下都优于现有方法。
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