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Analysis of Gait Features between Loaded and Normal Gait

机译:正常和正常步态之间的步态特征分析

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摘要

Ever since the beginning of research on gait recognition, the main focus has been on investigating gait as a biometric. For security surveillance systems, the detection of suspicious behavior is considered to be more relevant than the recognition of identity, which applies more to security authentication systems. Hence, this research uses gait features as cues to detect suspicious behavior. In this work, the effect of load bearing on gait is investigated by analyzing the kinematics parameters between normal and loaded gaits to find out the ground truth between them. The focus is on two features computed throughout a video sequence: silhouette attributes attraction and limbs angular displacements attraction. The silhouette attributes use the area and center of mass of objects. The volunteers were carrying 5kg, 10kg, 15kg and 20kg weights in a bag pack attached either to the back or to the front of their bodies. The results show that silhouette area can be a useful descriptor for discriminating between loaded and normal gait. The second feature (limbs angular displacements attraction) also gives a positive result (92.2%) for both loads starting from 10kg attached at the back and front of subjects.
机译:自从关于步态识别的研究开始以来,主要的重点一直是将步态作为一种生物特征进行研究。对于安全监视系统,可疑行为的检测被认为比身份识别更相关,身份识别更适用于安全认证系统。因此,本研究使用步态特征作为线索来检测可疑行为。在这项工作中,通过分析正常步态和负载步态之间的运动学参数以找出两者之间的地面真相,来研究承重对步态的影响。重点是在整个视频序列中计算出的两个特征:轮廓属性吸引和肢体角位移吸引。轮廓属性使用对象的面积和质心。志愿者们将5公斤,10公斤,15公斤和20公斤的重量装在附在他们身体背面或正面的袋子里。结果表明,轮廓区域可以作为区分步态和正常步态的有用描述符。第二个特征(肢体角位移吸引)对于从被检体的前后两侧附着的10kg开始的两个载荷也都给出了积极的结果(92.2%)。

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