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Hand gesture recognition using K-means clustering and Support Vector Machine

机译:使用K均值聚类和支持向量机的手势识别

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Human-Robot Interaction (HRI) requires media for communication which can be both understood by robot and easily done by human. Usually, human using oral language to communicate but there are some situations that require performing non-verbal activities such as deaf people, patient, and old people, therefore gesture recognition as communication media is needed to give order to Robot. This paper discusses hand gesture recognition as input command for Bioloid Premium Robot using two methods, K-Means clustering and Support Vector Machine (SVM) with directed acyclic graph (DAG) decision. Four gestures (forward, right, left and stop) were recognized using Kinect v2. The testing was done 6 peoples for three distances (2m, 3m, and 4m) and three slopes position (45, 0, -45). The SVM required 10ms recognition time with accuracy reached 95.15%, while K-Means needed 4.45ms recognition time with 77.42% accuracy. This study resulted in Multiclass SVM with DAG decision performs better than K-Means clustering method.
机译:人体机器人交互(HRI)需要媒体进行沟通,其既可以通过机器人理解,并且通过人类容易地完成。通常,人类使用口语语言进行沟通,但有一些情况需要执行聋人,病人和老年人等非口头活动,因此手势识别作为通信媒体需要达到机器人。本文讨论了使用两种方法的Bioloid Premium机器人的手势识别作为Bioloid Premium机器人的输入命令,具有指导的非循环图(DAG)决定。使用Kinect V2认可四个手势(前进,右侧,左侧和停止)。该测试完成了6个距离(2M,3M,4M)和三个斜坡位置(45,0,-45)。 SVM需要10ms识别时间,精度达到95.15 \%,而K-means需要4.45ms识别时间,精度为77.42 \%。该研究导致多标准SVM,DAG判定表现优于K均值聚类方法。

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