Application of convolutional neural networks for static hand gestures recognition under different invariant features

C. Jose L. Flores, A. E. Gladys Cutipa, R. Lauro Enciso
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引用次数: 47

Abstract

The present work proposes to recognize the static hand gestures taken under invariations features as scale, rotation, translation, illumination, noise and background. We use the alphabet of sign language of Peru (LSP). For this purpose, digital image processing techniques are used to eliminate or reduce noise, to improve the contrast under a variant illumination, to separate the hand from the background of the image and finally detect and cut the region containing the hand gesture. We use of convolutional neural networks (CNN) to classify the 24 hand gestures. Two CNN architectures were developed with different amounts of layers and parameters per layer. The tests showed that the first CNN has an accuracy of 95.37% and the second CNN has an accuracy of 96.20% in terms of recognition of the 24 static hand gestures using the database developed. We compared the two architectures developed in accuracy level for each type of invariance presented in this paper. We compared the two architectures developed and usual techniques of machine learning in results of accuracy.
卷积神经网络在不同不变特征下静态手势识别中的应用
本文提出在尺度、旋转、平移、光照、噪声和背景等不变性特征下对静态手势进行识别。我们使用秘鲁手语(LSP)的字母表。为此,利用数字图像处理技术消除或降低噪声,提高不同照度下的对比度,将手从图像背景中分离出来,最后检测和切割包含手势的区域。我们使用卷积神经网络(CNN)对24种手势进行分类。开发了两种具有不同层数和每层参数的CNN架构。测试表明,使用开发的数据库对24种静态手势的识别,第一种CNN的准确率为95.37%,第二种CNN的准确率为96.20%。我们比较了本文中每种不变性类型在精度级别上开发的两种体系结构。我们比较了两种开发的架构和通常的机器学习技术的准确性结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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