Human gait is considered a unique biometric identifier which can be acquired in a covert manner at a distance. However, models trained on existing public domain gait datasets which are captured in controlled scenarios lead to drastic performance decline when applied to real-world unconstrained gait data. On the other hand, video person re-identification techniques have achieved promising performance on large-scale publicly available datasets. Given the diversity of clothing characteristics, clothing cue is not reliable for person recognition in general. So, it is actually not clear why the state-of-the-art person re-identification methods work as well as they do. In this paper, we construct a new gait dataset by extracting silhouettes from an existing video person re-identification challenge which consists of 1,404 persons walking in an unconstrained manner. Based on this dataset, a consistent and comparative study between gait recognition and person re-identification can be carried out. Given that our experimental results show that current gait recognition approaches designed under data collected in controlled scenarios are inappropriate for real surveillance scenarios, we propose a novel gait recognition method, called RealGait. Our results suggest that recognizing people by their gait in real surveillance scenarios is feasible and the underlying gait pattern is probably the true reason why video person re-idenfification works in practice.
翻译:人类行踪被视为一种独特的生物鉴别特征,可以在很远的地方以隐蔽的方式获取。然而,在受控的情景中捕捉到的现有公共领域行迹数据集培训模型,在应用真实世界不受限制的行迹数据时,其性能会急剧下降。另一方面,视频人重新识别技术在大规模公开提供的数据集上取得了有希望的性能。鉴于服装特征的多样性,服装提示对一般人的认识来说并不可靠。因此,目前尚不清楚的是,最先进的人重新识别方法为何能像他们一样发挥作用。在本文中,我们通过从现有视频人重新识别挑战中提取环形图谱来建立一个新的行迹数据集,其中包括1 404人以不受限制的方式行走。在这个数据集的基础上,可以对视像识别与个人重新识别进行一致和比较研究。鉴于我们的实验结果显示,在受控情景中收集的数据所设计的当前演迹识别方法不适合真实的监视情景,我们提出了一个新型的视像识别方法,称为RealGait。我们的结果表明,人们在真实的场景中认识到真实的情景是真实的情景。