Gait recognition, which identifies individuals based on their walking patterns, is an important biometric technique since it can be observed from a distance and does not require the subject's cooperation. Recognizing a person's gait is difficult because of the appearance variants in human silhouette sequences produced by varying viewing angles, carrying objects, and clothing. Recent research has produced a number of ways for coping with these variants. In this paper, we present the usage of inferring 3-D body shapes distilled from limited images, which are, in principle, invariant to the specified variants. Inference of 3-D shape is a difficult task, especially when only silhouettes are provided in a dataset. We provide a method for learning 3-D body inference from silhouettes by transferring knowledge from 3-D shape prior from RGB photos. We use our method on multiple existing state-of-the-art gait baselines and obtain consistent improvements for gait identification on two public datasets, CASIA-B and OUMVLP, on several variants and settings, including a new setting of novel views not seen during training.
翻译:Gait 识别是根据行走模式识别个人的特征,是一项重要的生物鉴别技术,因为它可以从远处观测到,不需要当事人的合作。认识到一个人的行踪是困难的,因为通过不同视觉角度、携带物体和衣着产生的人体双影序列中的外观变异。最近的研究产生了一些应对这些变异的方法。在本文中,我们介绍了从有限的图像中蒸发的三维体形的使用情况,这些三维体形是原则上与特定变异体不相容的。3D形的推断是一项困难的任务,特别是在数据集中只提供环形图象的情况下。我们提供了一种方法,通过从RGB照片之前的三维形中传授知识,从这些变异体中学习三维体的推断。我们用我们的方法对多种现有的最先进的轮廓基线进行计算,并取得一致的改进,用于对两种变异体(CSIA-B和OUMVLP)在多个变异体和设置上的审像识别,其中包括在培训期间没有看到的新观点。