Feature map pooling for cross-view gait recognition based on silhouette sequence images

Qiang Chen, Yunhong Wang, Zheng Liu, Qingjie Liu, Di Huang
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引用次数: 20

Abstract

In this paper, we develop a novel convolutional neural network based approach to extract and aggregate useful information from gait silhouette sequence images instead of simply representing the gait process by averaging silhouette images. The network takes a pair of arbitrary length sequence images as inputs and extracts features for each silhouette independently. Then a feature map pooling strategy is adopted to aggregate sequence features. Subsequently, a network which is similar to Siamese network is designed to perform recognition. The proposed network is simple and easy to implement and can be trained in an end-to-end manner Cross-view gait recognition experiments are conducted on OU-ISIR large population dataset. The results demonstrate that our network can extract and aggregate features from silhouette sequence effectively. It also achieves significant equal error rates and comparable identification rates when compared with the state of the art.
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基于轮廓序列图像的跨视步态识别特征映射池
在本文中,我们开发了一种新的基于卷积神经网络的方法,从步态轮廓序列图像中提取和聚合有用的信息,而不是简单地通过平均轮廓图像来表示步态过程。该网络以一对任意长度的序列图像作为输入,独立提取每个轮廓的特征。然后采用特征映射池策略对序列特征进行聚合。随后,设计了一种类似于暹罗网络的网络进行识别。本文提出的网络结构简单,易于实现,可以端到端训练,并在OU-ISIR大种群数据集上进行了横视步态识别实验。结果表明,该网络可以有效地提取和聚合轮廓序列中的特征。与现有技术相比,它还实现了显著相等的错误率和可比较的识别率。
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