ARM11上基于优化神经网络形状拟合的手势识别

Heri Setiawan, Iwan Setyawan, Saptadi Nugroho
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引用次数: 1

摘要

文献中提出了各种各样的手势识别方法,识别率都很高。但是在嵌入式系统中实现这些方法仍然具有挑战性,因为图像处理应用需要高性能的处理器。本文在OK6410B板的系统上实现了一个手势识别系统。这块板有一个运行在532兆赫的处理器,这对于一个小处理器来说是相对较高的。本文提出的手势识别方法是基于神经网络形状拟合的。本文对该方法进行了一些改进。这些改进包括初始化过程中的像素随机化、迭代过程中增加多个神经元、使用查找表进行距离测量和简化手指检测。这些修改产生了更快的处理时间(在OK6410B上为0.95秒)和更高的识别率(使用静态图像作为输入94.44%,使用网络摄像头的实时输入84.53%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hand gesture recognition using Optimized Neural Network Shape Fitting on ARM11
Various methods of hand gesture recognition have been proposed in the literature, with high recognition rate. But implementing these methods in embedded system is still challenging since image processing applications needs a high-performance processor. In this paper, a hand gesture recognition system is implemented on a system with an OK6410B board. This board has a processor that runs at 532 MHz, which is relatively high for a small processor. The hand gesture recognition method proposed in this paper is based on the Neural Network Shape Fitting. In this paper we propose some modifications to this method. The modifications were pixel randomizing during the initialization step, addition of several neurons in the iterations, using lookup table for distance measurement and simplification of the finger detection. These modifications yielded a faster processing time (0.95s on the OK6410B) and a higher recognition rate (94.44% using still images as input and 84.53% using live input from a webcam).
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