基于深度的手势识别利用手部运动和缺陷

Wei-Lun Chen, Chih-Hung Wu, C. Lin
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引用次数: 12

摘要

本文提出了一种仅利用深度信息的动态手势识别系统。该系统可以识别12种不同的动态手势,包括滑动、缩放、推动、摆动、旋转、绕圈和拖动。首先采用背景减法去除不需要的信息,得到主要用户的深度信息;此外,还可以跟踪手部位置,并提取手部区域作为自适应正方形。得到手的区域后,通过计算手区域的深度信息得到手的参数。该系统利用手部参数对动态手势进行识别。在实验中,由两个不同的人在2个不同的深度验证了所提出系统的性能,并对右手和左手进行了验证。实验结果表明,该系统能够识别动态手势,平均识别率为90.08%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Depth-based hand gesture recognition using hand movements and defects
In this paper, we proposed a dynamic hand gesture recognition system by using only the depth information. The proposed system can recognize twelve different dynamic hand gestures, including swipes, scales, push, wave, rotates, circle, and drag. First, the background subtraction is used to remove the unnecessary information, and the depth information of main user can be obtained. Furthermore, hand position can be tracked, and the region of hand is extracted as an adaptive square. Once the region of hand is obtained, the hand parameters are obtained by calculating the depth information of hand region. The proposed system can recognize dynamic hand gesture by using the hand parameters. In the experiment, the performance of the proposed system is verified by two different people at 2 different depths, and both right and left hands are verified. The experimental result show that the proposed system can recognize the dynamic hand gestures with an average recognition rate of 90.08%.
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