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Kernel-Based Fuzzy Local Binary Pattern for Gait Recognition

机译:基于核的步态识别模糊局部二值模式

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Gait recognition has received increasing attention in biometrics. However, more effort is needed to enhance the performance. In this paper, we investigate a novel descriptor for gait recognition known as Kernel-based Fuzzy Local Binary Pattern (KFLBP). The spatio-temporal static and dynamic characteristics of a gait sequence is first summarized using a Gait-Energy Image (GEI). Then, the proposed approach combines multiple FLBP with different radii to better handle uncertainty in GEI and improve the recognition performance. We evaluate the proposed method on CASIA B dataset at different view angles. We also compare the performance with other feature extraction methods and explore the impact of different walking covariates on the performance.
机译:步态识别已越来越受到生物识别技术的关注。但是,需要付出更多的努力来提高性能。在本文中,我们研究了一种用于步态识别的新型描述符,称为基于核的模糊局部二进制模式(KFLBP)。步态序列的时空静态和动态特征首先使用步态能量图像(GEI)进行总结。然后,提出的方法将具有不同半径的多个FLBP组合在一起,以更好地处理GEI中的不确定性并提高识别性能。我们在不同视角下对CASIA B数据集评估了该方法。我们还将性能与其他特征提取方法进行比较,并探索不同步行协变量对性能的影响。

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