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改进KNN算法对人体身份的识别
引用本文:连天友,余勤.改进KNN算法对人体身份的识别[J].计算机工程与应用,2019,55(11):142-146.
作者姓名:连天友  余勤
作者单位:四川大学 电气信息学院,成都,610065;四川大学 电气信息学院,成都,610065
摘    要:为了理解特征学习过程、减少数据存储和提高识别率,提出使用Kinect v2的面部数据和骨骼数据作为数据集和一种改进KNN算法对人体身份的识别。使用Kinect v2提取出人体脸部特征点和骨骼关节点的三维位置信息,通过提取出的特征点的坐标计算出理解性强的特征信息如眼宽、臂长等。利用一种改进的截断均值聚类方法,通过排序把奇异值分布到数据集两端,截取数据集中间特征以抑制奇异值,利用基于匹配识别准确度的改进KNN算法对人体身份进行预测。实验结果表明提出的聚类方法匹配识别准确度更高,改进的分类方法也提高了识别的准确率。

关 键 词:人体身份识别  脸部数据  骨骼数据  排序截断均值法  匹配识别准确度

Human Identity Recognition Using Improved KNN Method
LIAN Tianyou,YU Qin.Human Identity Recognition Using Improved KNN Method[J].Computer Engineering and Applications,2019,55(11):142-146.
Authors:LIAN Tianyou  YU Qin
Affiliation:School of Electrical and Information, Sichuan University, Chengdu 610065, China
Abstract:In order to understand the features learning process, reduce storage of data and improve recognition accuracy, an improved KNN method is proposed for human identification based on Kinect v2’s facial data and skeletal data. First of all, 3-D position information of facial feature points and skeletal joints is extracted by Kinect v2 and then the characteristic information of strong understanding like eye width and arm length can be calculated. It is proposed that an improved truncated mean method can restrain singular values by sorting data and intercepting the intermediate data, and an improved KNN method based on the accuracy of matching recognition is applied to predict human identity. Experimental results show that the proposed clustering method has higher accuracy of matching recognition and the improved classification method improves the accuracy of recognition.
Keywords:human identity recognition  facial data  skeletal data  sort truncated mean method  accuracy of matching recognition  
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