基于支持向量机的越南语手语识别特征自动提取

Phạm Thế Hải, Huynh Chau Thinh, Bui Van Phuc, H. H. Kha
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引用次数: 12

摘要

本文旨在寻找一种自动提取越南语手语特征的方法,将越南语静态字母及其组合变音符标记分类为动态手势。越南手语识别系统(VSLRS)收集所有图像,包括深度图像、RGB图像和骨骼连接图,以提取每个手势及其自身动作的所需特征。这些特征被归一化和转换,以建立一个完整的越南语手语结合变音符。该系统的主要特点是自动提取被观察人在Kinect设备版本1之前的手势,并且由于运动检测方法,动态和静态变音符都可以被识别。采用多类支持向量机(svm)和“一对全”方法分别寻找适合静态和动态手势识别的svm。在识别阶段,对所有的手势进行提取、归一化,然后根据捕获帧中手部位置的欧氏距离差进行过滤,通过精确的支持向量机。被识别的字母或变音符号是所有SVM类的正标签。实验结果表明,所提出的VSLRS识别越南语手语具有较高的实时性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic feature extraction for Vietnamese sign language recognition using support vector machine
This paper aims at finding an automatic approach for extracting features of the Vietnamese sign language to classify both static Vietnamese alphabet letters and their combing diacritic marks as dynamic hand gestures. A Vietnamese sign language recognition system (VSLRS) collects all images including depth images, RGB images, and skeletal join maps to extract the desired features of each hand gesture and their own movements. These characteristics are normalized and converted to build a full Vietnamese sign language combing diacritic marks. The primary features of this system are automatically extracting the hand gestures of the observed person before the Kinect device version 1, and both dynamic and static diacritic marks are able to be recognized because of the movement detection method. Multi-class support vector machines (SVMs) and the One-Against-All approach are employed to find two suitable SVMs for static and dynamic hand gesture recognition. During the recognition phase, all hand gestures are extracted, normalized, and then filtered out based on the Euclidean distance difference of hand positions in captured frames to go through the exact SVMs. The recognized letter or diacritic is the positive label of all the SVM classes. The experimental results demonstrate the proposed VSLRS recognized the Vietnamese sign language (VSL) in realtime with the high accuracy.
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