A mobile application of American sign language translation via image processing algorithms

Cheok Ming Jin, Z. Omar, M. Jaward
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引用次数: 61

Abstract

Due to the relative lack of pervasive sign language usage within our society, deaf and other verbally-challenged people tend to face difficulty in communicating on a daily basis. Our study thus aims to provide research into a sign language translator applied on the smartphone platform, due to its portability and ease of use. In this paper, a novel framework comprising established image processing techniques is proposed to recognise images of several sign language gestures. More specifically, we initially implement Canny edge detection and seeded region growing to segment the hand gesture from its background. Feature points are then extracted with Speeded Up Robust Features (SURF) algorithm, whose features are derived through Bag of Features (BoF). Support Vector Machine (SVM) is subsequently applied to classify our gesture image dataset; where the trained dataset is used to recognize future sign language gesture inputs. The proposed framework has been successfully implemented on smartphone platforms, and experimental results show that it is able to recognize and translate 16 different American Sign Language gestures with an overall accuracy of 97.13%.
基于图像处理算法的美国手语翻译移动应用
由于在我们的社会中相对缺乏普遍的手语使用,聋哑人和其他有语言障碍的人在日常交流中往往面临困难。因此,我们的研究旨在为智能手机平台上的手语翻译提供研究,因为它的便携性和易用性。在本文中,提出了一种新的框架,包括现有的图像处理技术来识别几种手语手势的图像。更具体地说,我们最初实现了Canny边缘检测和种子区域生长,以从背景中分割手势。然后使用加速鲁棒特征(SURF)算法提取特征点,特征点的特征通过特征包(BoF)得到。随后应用支持向量机(SVM)对手势图像数据集进行分类;其中训练的数据集用于识别未来的手语手势输入。该框架已在智能手机平台上成功实现,实验结果表明,该框架能够识别和翻译16种不同的美国手语手势,总体准确率为97.13%。
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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