基于深度图像的步态能量体积与正面步态识别

Sabesan Sivapalan, Daniel Chen, S. Denman, S. Sridharan, C. Fookes
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引用次数: 135

摘要

步态能量图像(GEIs)及其变体构成了许多基于外观的步态识别系统的基础。GEI结合了良好的识别性能和简单的实现,尽管它存在基于外观的方法固有的问题,例如高度依赖视图。在本文中,我们将GEI的概念扩展到3D,以创建我们所谓的步态能量体积,或GEV。在CMU MoBo数据库上测试了一个基本的GEV实现,显示了GEI基线和融合的多视图GEI方法的改进。我们还证明了这种方法在从正面深度图像创建的部分体积重建上的有效性,这些图像可以更实际地获得,例如,在使用立体摄像机或其他深度获取系统实现的生物识别门户中。在使用微软Kinect捕获的内部开发数据库上对正面深度图像进行了实验评估,并证明了所提出方法的有效性。
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Gait energy volumes and frontal gait recognition using depth images
Gait energy images (GEIs) and its variants form the basis of many recent appearance-based gait recognition systems. The GEI combines good recognition performance with a simple implementation, though it suffers problems inherent to appearance-based approaches, such as being highly view dependent. In this paper, we extend the concept of the GEI to 3D, to create what we call the gait energy volume, or GEV. A basic GEV implementation is tested on the CMU MoBo database, showing improvements over both the GEI baseline and a fused multi-view GEI approach. We also demonstrate the efficacy of this approach on partial volume reconstructions created from frontal depth images, which can be more practically acquired, for example, in biometric portals implemented with stereo cameras, or other depth acquisition systems. Experiments on frontal depth images are evaluated on an in-house developed database captured using the Microsoft Kinect, and demonstrate the validity of the proposed approach.
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