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Attention-Aware Network with Latent Semantic Analysis for Clothing Invariant Gait Recognition

机译:有关服装不变步态认可的潜在语义分析的注意力感知网络

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摘要

Gait recognition is a complicated task due to the existence of co-factors like carrying conditions, clothing, viewpoints, and surfaces which change the appearance of gait more or less. Among those co-factors, clothing analysis is the most challenging one in the area. Conventional methods which are proposed for clothing invariant gait recognition show the body parts and the underlying relationships from them are important for gait recognition. Fortunately, attention mechanism shows dramatic performance for highlighting discriminative regions. Meanwhile, latent semantic analysis is known for the ability of capturing latent semantic variables to represent the underlying attributes and capturing the relationships from the raw input. Thus, we propose a new CNN-based method which leverages advantage of the latent semantic analysis and attention mechanism. Based on discriminative features extracted using attention and the latent semantic analysis module respectively, multi-modal fusion method is proposed to fuse those features for its high fault tolerance in the decision level. Experiments on the most challenging clothing variation dataset: OU-ISIR TEADMILL dataset B show that our method outperforms other state-of-art gait approaches.
机译:由于携带条件,衣服,观点和表面等携带条件,衣服,观点和表面的表面存在,步态认可是一种复杂的任务。在这些共同因素中,服装分析是该地区最具挑战性的。提出用于服装不变步态识别的常规方法显示身体部位和来自它们的潜在关系对于步态识别是重要的。幸运的是,注意机制显示了突出歧视区域的戏剧性表现。同时,已知潜在语义分析以捕获潜在语义变量来表示基础属性并捕获从原始输入的关系。因此,我们提出了一种新的基于CNN的方法,其利用潜在语义分析和注意机制。基于使用注意力和潜在语义分析模块提取的辨别特征,提出了多模态融合方法,以熔断到决策级别的高容错容差的特征。对最具挑战性的衣物变化数据集进行实验:OU-ISIR Teadmill Dataset B表明我们的方法优于其他最先进的步态方法。

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