IEEE Trans Cybern. 2013 Feb;43(1):77-89. doi: 10.1109/TSMCB.2012.2199310. Epub 2012 Jun 5.
Gait analysis provides a feasible approach for identification in intelligent video surveillance. However, the effectiveness of the dominant silhouette-based approaches is overly dependent upon background subtraction. In this paper, we propose a novel incremental framework based on optical flow, including dynamics learning, pattern retrieval, and recognition. It can greatly improve the usability of gait traits in video surveillance applications. Local binary pattern (LBP) is employed to describe the texture information of optical flow. This representation is called LBP flow, which performs well as a static representation of gait movement. Dynamics within and among gait stances becomes the key consideration for multiframe detection and tracking, which is quite different from existing approaches. To simulate the natural way of knowledge acquisition, an individual hidden Markov model (HMM) representing the gait dynamics of a single subject incrementally evolves from a population model that reflects the average motion process of human gait. It is beneficial for both tracking and recognition and makes the training process of the HMM more robust to noise. Extensive experiments on widely adopted databases have been carried out to show that our proposed approach achieves excellent performance.
步态分析为智能视频监控中的身份识别提供了一种可行的方法。然而,主流的基于轮廓的方法的有效性过于依赖于背景减除。在本文中,我们提出了一种基于光流的新的增量框架,包括动力学学习、模式检索和识别。它可以极大地提高步态特征在视频监控应用中的可用性。局部二值模式 (LBP) 用于描述光流的纹理信息。这种表示形式称为 LBP 流,它作为步态运动的静态表示形式表现良好。步态姿势内部和之间的动态成为多帧检测和跟踪的关键考虑因素,这与现有方法有很大的不同。为了模拟知识获取的自然方式,个体隐马尔可夫模型 (HMM) 从反映人类步态平均运动过程的总体模型中,以增量的方式表示单个主体的步态动态。这对跟踪和识别都有好处,并使 HMM 的训练过程对噪声更健壮。我们在广泛采用的数据库上进行了大量实验,结果表明,我们提出的方法取得了优异的性能。