Human-Robot Interaction (HRI) through hand gestures for possible future war robots: A leap motion controller application

被引:0
作者
Erhan Sesli
机构
[1] Karadeniz Technical University,Of Technology Faculty, Department of Electronics and Telecommunication Engineering
来源
Multimedia Tools and Applications | 2024年 / 83卷
关键词
Human-robot interaction; Cumulative distribution function; Deep neural network; Leap motion controller; Hand gesture recognition;
D O I
暂无
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学科分类号
摘要
In this article, the futuristically possible human (commander)-robot (soldier) interaction (HRI) based on effective hand gesture recognition is discussed. As methodologically, Leap Motion Controller (LMC), which is frequently used in virtual reality applications, was used to obtain hand gesture features. Only the relevant distance of the fingers to each other and to the normal of the hand is considered as a feature and high performance is questioned under these constraints. Then performances of six hand gesture recognition methods, classified as light, medium weight, and complex, were examined with random dynamic movements and in different frame numbers. The performance of the proposed cumulative distribution function (CDF) based deep neural network (DNN) approach has achieved an accuracy of 88.44%. With this result, an improvement of 4.76% has been achieved compared to the second closest method, Kullback Leibler Divergence, by using the proposed method. Although limited features, high performance has been achieved. There is no mechanical or electronic robot design in the study; however, the computer used as the decision mechanism of the robot was modeled and made ready for application. In this sense, we believe wholeheartedly that in the future, this work can be a pioneer study in the military field.
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页码:36547 / 36570
页数:23
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