Kinect based Frontal Gait Recognition using skeleton and depth derived features

Manasa Gowri Hebbur Sheshadri, M. Okade
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引用次数: 2

Abstract

Recognizing humans through gait has been an emanant biometric technology in the recent years owing to the fact that it is unobtrusive since it does not require a subject's cooperation. This paper investigates Kinect based gait recognition of human subjects for surveillance applications especially in narrow corridor and airport scenarios where only the frontal views are available. Two features namely skeleton size feature and projectile motion feature extracted from skeleton data and one feature derived by segmenting the depth data using superpixels followed by SURF descriptor extraction are utilized in a hierarchical framework to obtain the closest matching subject for recognition purposes. The proposed method provides considerable increase in the recognition accuracy and recognition rank in comparison to state-of-the-art gait recognition approaches.
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基于Kinect的正面步态识别,使用骨骼和深度衍生特征
步态识别技术由于其不需要受试者的配合而不引人注目,近年来已成为一种新兴的生物识别技术。本文研究了基于Kinect的人类受试者步态识别的监控应用,特别是在狭窄的走廊和机场场景中,只有正面视图可用。利用从骨骼数据中提取的骨架尺寸特征和弹丸运动特征,以及利用超像素分割深度数据并提取SURF描述符提取的一个特征,在分层框架中获得最接近的匹配对象进行识别。与先进的步态识别方法相比,该方法在识别精度和识别等级方面有显著提高。
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