基于局部二值模式和几何特征的鲁棒ASL手指拼写识别

C. Weerasekera, M. Jaward, N. Kamrani
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引用次数: 22

摘要

使用计算机视觉技术的手语识别使机器能够充当手语的翻译,同时消除了对笨重的数据手套的需要。本文提出了一种基于特征组合的静态徒手手语鲁棒识别方法。其中包括基于颜色和深度信息的局部二值模式(LBP)直方图特征,以及手的几何特征。使用线性二值支持向量机(SVM)分类器进行识别,在有多个匹配的情况下进行模板匹配。提出了一种基于Kinect深度传感器的手部精确分割方案。由此产生的手语识别系统可以应用于许多实际场景,并且可以在复杂的环境中实时工作。它还显示出对用户和相机之间距离变化的鲁棒性,并且可以处理不同用户之间可能出现的拼写变化。该算法在两个ASL指纹拼写数据集上进行了测试,总体分类率超过90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust ASL Fingerspelling Recognition Using Local Binary Patterns and Geometric Features
Sign language recognition using computer vision techniques enables machines to function as interpreters of sign language while eliminating the need for cumbersome data gloves. In this paper, a robust approach for recognition of bare-handed static sign language is presented, using a novel combination of features. These include Local Binary Patterns (LBP) histogram features based on color and depth information, and also geometric features of the hand. Linear binary Support Vector Machine (SVM) classifiers are used for recognition, coupled with template matching in the case of multiple matches. An accurate hand segmentation scheme using the Kinect depth sensor is also presented. The resulting sign language recognition system could be employed in many practical scenarios and works in complex environments in real-time. It is also shown to be robust to changes in distance between the user and camera and can handle possible variations in fingerspelling among different users. The algorithm is tested on two ASL fingerspelling datasets where overall classification rates over 90% are observed.
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