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A Component-Based Vocabulary-Extensible Sign Language Gesture Recognition Framework

机译:基于组件的词汇可扩展手语手势识别框架

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摘要

Sign language recognition (SLR) can provide a helpful tool for the communication between the deaf and the external world. This paper proposed a component-based vocabulary extensible SLR framework using data from surface electromyographic (sEMG) sensors, accelerometers (ACC), and gyroscopes (GYRO). In this framework, a sign word was considered to be a combination of five common sign components, including hand shape, axis, orientation, rotation, and trajectory, and sign classification was implemented based on the recognition of five components. Especially, the proposed SLR framework consisted of two major parts. The first part was to obtain the component-based form of sign gestures and establish the code table of target sign gesture set using data from a reference subject. In the second part, which was designed for new users, component classifiers were trained using a training set suggested by the reference subject and the classification of unknown gestures was performed with a code matching method. Five subjects participated in this study and recognition experiments under different size of training sets were implemented on a target gesture set consisting of 110 frequently-used Chinese Sign Language (CSL) sign words. The experimental results demonstrated that the proposed framework can realize large-scale gesture set recognition with a small-scale training set. With the smallest training sets (containing about one-third gestures of the target gesture set) suggested by two reference subjects, (82.6 ± 13.2)% and (79.7 ± 13.4)% average recognition accuracy were obtained for 110 words respectively, and the average recognition accuracy climbed up to (88 ± 13.7)% and (86.3 ± 13.7)% when the training set included 50~60 gestures (about half of the target gesture set). The proposed framework can significantly reduce the user’s training burden in large-scale gesture recognition, which will facilitate the implementation of a practical SLR system.
机译:手语识别(SLR)可为聋人与外界之间的交流提供有用的工具。本文使用表面肌电(sEMG)传感器,加速度计(ACC)和陀螺仪(GYRO)的数据,提出了一种基于组件的词汇可扩展SLR框架。在此框架中,符号词被认为是五个常见符号组成部分的组合,包括手形,轴,方向,旋转和轨迹,并且基于五个组成部分的识别来实现符号分类。特别是,建议的SLR框架包括两个主要部分。第一部分是获得手势手势的基于组件的形式,并使用来自参考对象的数据建立目标手势手势的代码表。在为新用户设计的第二部分中,使用参考对象建议的训练集对组件分类器进行训练,并使用代码匹配方法对未知手势进行分类。五名受试者参加了这项研究,并在由110个常用中国手语(CSL)手语组成的目标手势集上实施了不同大小的训练集下的识别实验。实验结果表明,提出的框架可以通过小规模的训练集实现大规模的手势集识别。在由两个参考对象建议的最小训练集(包含目标手势集的大约三分之一手势)的情况下,分别对110个单词获得了(82.6±13.2)%和(79.7±13.4)%的平均识别准确率,并且平均当训练集包含50〜60个手势(约占目标手势集的一半)时,识别准确率分别达到(88±13.7)%和(86.3±13.7)%。拟议的框架可以大大减少用户在大规模手势识别中的训练负担,这将有助于实施实用的SLR系统。

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