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Triangular membership function based real-time gesture monitoring system for physical disorder detection

机译:基于三角隶属函数的身体姿势检测实时手势监控系统

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摘要

A novel approach to distinguish 25 body gestures enlightening physical disorders in young and elder individuals is explained using the proposed system. Here a well-known human sensing device, Kinect sensor is used which approximates the human body by virtue of 20 body joints and produces a data stream from which skeleton of the human body is traced. Sampling rate of the data stream is 30 frames per second where every frame represents a body gesture. The overall system is bifurcated into two parts. The offline part calculates 19 features from each frame representing a diseased gesture. These features are angle and distance information between 20 body joints. Features correspond to a definite pattern for a specific body gesture. In online part, triangular fuzzy matching based algorithm performs to detect real-time gestures with 90.57% accuracy. For achieving better accuracy, decision tree is enforced to separate sitting and standing body gestures. The proposed approach is observed to outperform several contemporary approaches in terms of accuracy while presenting a simple system which is based on medical knowledge and is capable of distinguishing as large as 25 gestures.
机译:使用提出的系统解释了一种新颖的方法,该方法可以区分25种启发年轻人和老年人身体不适的身体姿势。这里使用了众所周知的人体感应设备Kinect传感器,该传感器通过20个人体关节来逼近人体,并产生从中追踪人体骨骼的数据流。数据流的采样率为每秒30帧,其中每帧代表一个身体手势。整个系统分为两个部分。离线部分从代表患病手势的每个帧中计算19个特征。这些功能是20个人体关节之间的角度和距离信息。特征对应于特定身体手势的确定模式。在在线部分中,基于三角形模糊匹配的算法执行以90.57%的精度检测实时手势。为了获得更好的准确性,必须执行决策树以分离坐姿和站立姿势。观察到所提出的方法在准确性方面优于几种当代方法,同时提出了一种基于医学知识并且能够区分多达25个手势的简单系统。

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