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Investigating the use of motion-based features from optical flow for gait recognition

机译:研究使用光流中基于运动的特征进行步态识别

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Although numerous research studies have confirmed the potentials of using gait for people identification in surveillance and forensic scenarios, only a few studies have investigated the contribution of motion-based features on the recognition process. In this research paper, we explore the use of optical flow estimated from consecutive frames to construct a discriminative biometric signature for gait recognition. A set of experiments are carried out using the CASIA-B dataset to assess the discriminatory potency of motion-based features for gait identification subjected to different covariate factors including clothing and carrying conditions. Further experiments are conducted to explore the effects of the dataset size, the number of frames and viewpoint on the classification process. Based on a dataset containing 10 0 0 video sequences for 100 individuals, higher recognition rates are achieved using the Knn and neural network classifiers without incorporating static and anthropometric measurements. This confirms that gait identification using motion-based features is perceivable with acceptable recognition rates even under different covariate factors. As such, this is a major milestone in translating gait research to surveillance and forensic scenarios. (c) 2017 Elsevier B.V. All rights reserved.
机译:尽管许多研究已经证实了在监视和法医场景中使用步态进行人识别的潜力,但只有少数研究调查了基于运动的特征在识别过程中的作用。在这篇研究论文中,我们探索了使用从连续帧中估计的光流来构建区分生物特征的步态识别特征。使用CASIA-B数据集进行了一组实验,以评估基于运动特征的辨别力对步态识别的影响,这些特征受不同协变量因素(包括衣服和携带条件)的影响。进行了进一步的实验,以探索数据集大小,帧数和视点对分类过程的影响。基于包含100个个体的10 0 0视频序列的数据集,使用Knn和神经网络分类器可实现更高的识别率,而无需合并静态和人体测量。这证实了即使在不同的协变量因素下,使用基于运动的特征进行的步态识别在可接受的识别率下也是可以感知的。因此,这是将步态研究转化为监视和法医场景的重要里程碑。 (c)2017 Elsevier B.V.保留所有权利。

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