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SpiderNet: A spiderweb graph neural network for multi-view gait recognition

机译:SPIDernet:用于多视图步态识别的蜘蛛网图形神经网络

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摘要

Human gait is a proven biometric trait with applications in security for authentication and disease diagnosis. However, it is one-sided to express and interpret gait data from a single point of view, which cannot reflect multi-dimensional characteristics of gait changes. Moreover, if the gait pattern observed from other views has pathological or abnormal behavior, or has micro movement, it is not easy to be detected and thus affects the recognition rate of gait. In addition, the multi-view fusion of gait knowledge can be challenging due to the close correlation between various visual angles. Owing to the above facts, we propose a spiderweb graph neural network (SpiderNet) to solve the multi view gait recognition problem, which connects the gait data of single view with that of other views concurrently and constructs an active graph convolutional neural network. The gait trajectory of each view is analyzed by the combination of a memory module and a capsule module, which accomplishes the multi-view feature fusion, as well as the spatio-temporal feature extraction of single view. The experimental results show that the SpiderNet is superior to fifteen state-of-the-art methods, such as random forest, long-short term memory and convolutional neural network, and achieves 98.54%, 98.77%, and 96.91% of the results on three challenging gait datasets: SDUgait, CASIA-B, and OU-MVLP. (C) 2020 Elsevier B.V. All rights reserved.
机译:人体步态是一种经过验证的生物识别性质,具有安全性验证和疾病诊断的应用。然而,它是单侧从单一的角度表达和解释步态数据,这不能反映步态变化的多维特征。此外,如果从其他视图观察的步态模式具有病理或异常行为,或者具有微观运动,则不容易被检测,因此影响步态的识别率。另外,由于各种视角之间的紧密相关性,步态知识的多视图融合可能是具有挑战性的。由于上述事实,我们提出了一种蜘蛛网图形神经网络(SPIDernet)来解决多视图步态识别问题,它同时将单视图的步态数据与其他视图的步态数据连接并构建有源图形卷积神经网络。通过存储器模块和胶囊模块的组合来分析每个视图的步态轨迹,该胶囊模块实现多视图特征融合,以及单视图的时空特征提取。实验结果表明,蜘蛛网优于十五条现有的方法,如随机森林,长期记忆和卷积神经网络,达到98.54%,98.77%和96.91%的结果三个具有挑战性的步态数据集:sdugait,casia-b和ou-mvlp。 (c)2020 Elsevier B.v.保留所有权利。

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