基于图神经网络的端到端模型匹配模块步态识别

Yixin Xu, Zhihao Wang
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引用次数: 0

摘要

现有的步态识别系统通过从轮廓图像中提取稳健的步态特征取得了成功,但步态可能对服装和携带的物品等外观特征很敏感。作为一种更有前途的替代方法,基于模型的步态识别对某些变化(如衣服和携带的行李)具有鲁棒性。随着人体姿态估计技术的发展,基于模型的人体姿态估计方法的实现难度大大降低。本文介绍了一种基于端到端模型的步态识别方法,该方法是针对大规模、非受控数据集设计的。该方法以三维数据为输入,利用ST-GCN作为嵌入模块。为了获得更好的性能,我们已经替换了简单的最近邻算法。具体来说,3D骨架被嵌入到图神经网络中以表示相似性。在grow数据集上对所提出的方法进行了评估,显示了基于模型的步态识别的最先进(SOTA)结果。
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End-to-End Model-Based Gait Recognition with Matching Module Based on Graph Neural Networks
Existing gait recognition systems have achieved success by extracting robust gait features from silhouette images, but gait can be sensitive to appearance features such as clothing and carried items. As a more promising alternative, model-based gait recognition is robust against some variations, such as clothing and baggage carried. With the recent development of human pose estimation, the difficulty of implementing model-based methods has been mitigated. This paper introduces an end-to-end model-based gait recognition method designed for large-scale and uncontrolled datasets. The proposed method takes 3D data as input and utilizes the ST-GCN as the embedding module. We have replaced the simple nearest neighbor algorithm for better performance. Specifically, the 3D skeletons are embedded into the Graph Neural Network to represent similarities. The proposed method is evaluated on the GREW dataset, showing state-of-the-art (SOTA) results in model-based gait recognition.
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