This work offers a design of a video surveillance system based on a soft biometric -- gait identification from MoCap data. The main focus is on two substantial issues of the video surveillance scenario: (1) the walkers do not cooperate in providing learning data to establish their identities and (2) the data are often noisy or incomplete. We show that only a few examples of human gait cycles are required to learn a projection of raw MoCap data onto a low-dimensional sub-space where the identities are well separable. Latent features learned by Maximum Margin Criterion (MMC) method discriminate better than any collection of geometric features. The MMC method is also highly robust to noisy data and works properly even with only a fraction of joints tracked. The overall workflow of the design is directly applicable for a day-to-day operation based on the available MoCap technology and algorithms for gait analysis. In the concept we introduce, a walker's identity is represented by a cluster of gait data collected at their incidents within the surveillance system: They are how they walk.
翻译:这项工作提供了一个基于软生物鉴别技术的视频监视系统的设计 -- -- 从MoCAP数据中识别行踪 -- -- 主要侧重于视频监视情景的两个实质性问题:(1)行尸不合作提供学习数据以确定其身份,(2)数据往往是吵闹或不完整的;我们显示,只需要几个人类行尸周期的例子,就可以从一个低维的子空间中了解原始的机动车数据投射到身份完全可以分辨的低维次空间;由最大 Margin Cruition (MMC) 方法所学的隐性特征比任何几何特征的收集都好。MMC 方法对吵闹的数据也非常活跃,甚至只对所跟踪的一小部分联合进行适当操作。设计的总体工作流程直接适用于日常作业,以现有的移动机技术和计算方法为基础,用于进行编程分析。在我们介绍的概念中,行尸身份由在监测系统内收集的一组行踪数据代表着行尸身份:他们走路的方式。