密集视图GEIs集:基于密集视图GAN的步态识别视图空间覆盖

Rijun Liao, Weizhi An, Shiqi Yu, Zhu Li, Yongzhen Huang
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引用次数: 9

摘要

步态识别已被证明是远距离人体识别的有效方法。但是步态特征的视角变异会极大地改变人的外观,降低其性能。大多数现有的步态数据集通常收集十几个不同角度的数据,甚至更多。有限的视角会阻碍学习更好的视图不变性特征。以1°为间隔采集不同角度的数据,可以进一步提高步态识别的鲁棒性。但是这种数据集的收集是费时费力的。因此,在本文中,我们引入了一个密集视图gei集(dvi - gei)来处理有限视角的挑战。可覆盖整个视野空间,视角从0°到180°,间隔1°。此外,提出了密集视图GAN (DV-GAN)来合成该密集视图集。DV-GAN由生成器、鉴别器和监视器组成,其中监视器旨在保存人类识别和查看信息。在CASIA-B和OU-ISIR数据集上对该方法进行了评估。实验结果表明,由DV-GAN合成的DV-GEIs是一种学习更好的视点不变特征的有效方法。我们相信密集视图生成样本的思想将进一步促进步态识别的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dense-View GEIs Set: View Space Covering for Gait Recognition based on Dense-View GAN
Gait recognition has proven to be effective for long-distance human recognition. But view variance of gait features would change human appearance greatly and reduce its performance. Most existing gait datasets usually collect data with a dozen different angles, or even more few. Limited view angles would prevent learning better view invariant feature. It can further improve robustness of gait recognition if we collect data with various angles at 1° interval. But it is time consuming and labor consuming to collect this kind of dataset. In this paper, we, therefore, introduce a Dense-View GEIs Set (DV-GEIs) to deal with the challenge of limited view angles. This set can cover the whole view space, view angle from 0° to 180° with 1° interval. In addition, Dense-View GAN (DV-GAN) is proposed to synthesize this dense view set. DV-GAN consists of Generator, Discriminator and Monitor, where Monitor is designed to preserve human identification and view information. The proposed method is evaluated on the CASIA-B and OU-ISIR dataset. The experimental results show that DV-GEIs synthesized by DV-GAN is an effective way to learn better view invariant feature. We believe the idea of dense view generated samples will further improve the development of gait recognition.
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