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Gait recognition invariant to carried objects using alpha blending generative adversarial networks

机译:步态识别不变性使用alpha混合生成的对手网络携带物体

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Gait recognition invariant to carried objects (COs) is very difficult in a real-life scene because the COs can have various shapes and sizes, in addition to unpredictable carrying locations (e.g., front, back, and side, or multiple locations). Therefore, in this paper, we propose a robust method for gait recognition against various COs by reconstructing a gait template without COs. A straightforward approach is to directly generate a gait template without COs given a gait template with COs as the input using a conventional generative adversarial network. There is, however, a potential risk of unnecessarily altering parts that were originally unaffected by COs (e.g., leg parts for a person carrying a backpack). Because we do not want to touch such unaffected parts in the original template, we first estimate a gait template without COs, and then blend it with the original template by an estimated alpha matte that indicates the blending parameters. We then create an alpha-blended template from the original template and the generated template without COs based on the estimated alpha matte. We use two independent generators to estimate the alpha matte and the generated template without COs. Finally, we feed the alpha-blended gait template into a state-of-the-art discrimination network for gait recognition. The experimental results on three publicly available gait databases with real-life COs demonstrate the state-of-the-art performance of the proposed method. (C) 2020 The Authors. Published by Elsevier Ltd.
机译:除了不可预测的携带位置(例如,前,背部和侧面或多个位置之外,步态识别物体在现实场景中非常困难(COS)非常困难,因为COS可以具有各种形状和尺寸。因此,在本文中,我们提出了一种通过重建步态模板而没有COS的步态模板,提出了一种稳健的方法。直接的方法是直接产生步态模板,没有COS使用传统的生成对抗网络的COS作为输入的步态模板。然而,有不必要地改变的潜在风险最初不受COS(例如,携带背包的人的腿部零件)。因为我们不想在原始模板中触摸这种不受影响的部分,所以首先估计没有COS的步态模板,然后通过估计的alpha哑光将其与原始模板混合,表示混合参数。然后,我们根据估计的alpha遮罩创建从原始模板和生成的模板的字母混合模板。我们使用两个独立的生成器来估计Alpha遮罩和生成的模板,而没有COS。最后,我们将Alpha-Blended Gait模板馈送到最先进的识别网络中进行步态认可。实验结果与现实生活中的三个公开可用的步态数据库展示了所提出的方法的最先进的性能。 (c)2020作者。 elsevier有限公司出版

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