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Type 2 Fuzzy Induced Person Identification Using Kinect Sensor

机译:使用Kinect传感器型2模糊诱导人识别

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Automatic person recognition problem draws significant popularity in the last decade in the field of human-robot interaction. This paper introduces a novel approach to identify a person automatically whom the robot has already met, based on its walking pattern as gait is a unique characteristic for every individual Here, the Kinect sensor is used to record the gait pattern of a person by storing 20 3-D joint coordinates in each time stamps. The features like joint angle and joint length are obtained from each complete walk cycle. Among all these features, most significant features are selected using principal component analysis. Later, these features are fuzzified constructing a Gaussian membership function with the mean and standard deviation of each feature at different gait cycle. An Interval Type-2 membership is constructed with all these membership values for a particular feature in different trials. 10 walking data set of 10 subjects are processed here. Now, when any person out of these 10 persons is walking in front of Kinect, features are calculated. But as more than one feature value for a particular feature (each feature corresponds to each gait cycle in a complete walking task) is obtained, mean of all these values for a particular feature is considered as measurement point. Defuzzification is done using t-norm and average operators. The person corresponding to highest defuzzified value is considered as the unknown person. The classification accuracy is 89.667%. The proposed method is also compared with few existing person identification techniques and the results obtained prove the superiority of the proposed algorithm.
机译:自动人员识别问题在人机互动领域的最后十年中提出了重大普及。本文介绍了一种新的方法来识别机器人已经满足的人,基于其行走模式,因为步态是每个人的独特特征,Kinect传感器用于通过存储20来记录人的步态模式每次邮票中的3-D关节坐标。从每个完整的步行循环获得接合角和关节长度等特征。在所有这些功能中,使用主成分分析选择大多数重要特征。稍后,这些特征是模糊构建高斯成员函数,其具有不同步态周期的每个特征的平均值和标准偏差。在不同试验中的特定特征构建间隔类型-2成员资格。这里处理10个步行数据集10个受试者。现在,当这10个人中的任何人在Kinect前行走时,计算功能。但是,作为特定特征的多于一个特征值(每个特征对应于完整步行任务中的每个步态周期),所以将特定特征的所有这些值的均值视为测量点。使用T-Norm和平均运算符完成Defuzzzification。对应于最高排出值的人被认为是未知的人。分类准确性为89.667%。该方法还与少数现有人识别技术进行比较,并且获得的结果证明了所提出的算法的优越性。

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