Visual Hand Tracking on Depth Image using 2-D Matched Filter

Yong-qian Sun, Xiangpeng Liang, Hua Fan, M. Imran, H. Heidari
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引用次数: 8

Abstract

Hand detection has been the central attention of human-machine interaction in recent researches. In order to track hand accurately, traditional methods mostly involve using machine learning and other available libraries, which requires a lot of computational resource on data collection and processing. This paper presents a method of hand detection and tracking using depth image which can be conveniently and manageably applied in practice without the huge data analysis. This method is based on the two-dimensional matched filter in image processing to precisely locate the hand position through several underlying codes, cooperated with a Delta robot. Compared with other approaches, this method is comprehensible and time-saving, especially for single specific gesture detection and tracking. Additionally, it is friendly-programmed and can be used on variable platforms such as MATLAB and Python. The experiments show that this method can do fast hand tracking and improve accuracy by selecting the proper hand template and can be directly used in the applications of human-machine interaction. In order to evaluate the performance of gesture tracking, a recorded video on depth image model is used to test theoretical design, and a delta parallel robot is used to follow the moving hand by the proposed algorithm, which demonstrates the feasibility in practice.
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基于二维匹配滤波器的深度图像视觉手部跟踪
手部检测是近年来人机交互研究的热点。为了准确地跟踪手部,传统的方法大多涉及使用机器学习和其他可用的库,这需要大量的数据收集和处理计算资源。本文提出了一种基于深度图像的手部检测与跟踪方法,该方法可以方便、易于管理地应用于实际中,而无需进行大量的数据分析。该方法基于图像处理中的二维匹配滤波,通过多个底层代码,配合Delta机器人精确定位手部位置。与其他方法相比,该方法易于理解且节省时间,特别是对于单个特定手势的检测和跟踪。此外,它是友好的编程,可以在各种平台上使用,如MATLAB和Python。实验表明,该方法通过选择合适的手部模板,可以实现快速的手部跟踪,提高精度,可直接用于人机交互的应用。为了评估手势跟踪的性能,利用深度图像模型上录制的视频对理论设计进行了验证,并利用delta并联机器人跟踪了手的运动,验证了该算法的可行性。
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