Real-time recognition of sign language gestures and air-writing using leap motion

Pradeep Kumar, Rajkumar Saini, S. Behera, D. P. Dogra, P. Roy
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引用次数: 47

Abstract

A sign language is generally composed of three main parts, namely manual signas that are gestures made by hand or fingers movements, non-manual signs such as facial expressions or body postures, and finger-spelling where words are spelt out using gestures by the signers to convey the meaning. In literature, researchers have proposed various Sign Language Recognition (SLR) systems by focusing only one part of the sign language. However, combination of different parts has not been explored much. In this paper, we present a framework to recognize manual signs and finger spellings using Leap motion sensor. In the first phase, Support Vector Machine (SVM) classifier has been used to differentiate between manual and finger spelling gestures. Next, two BLSTM-NN classifiers are used for the recognition of manual signs and finger-spelling gestures using sequence-classification and sequence-transcription based approaches, respectively. A dataset of 2240 sign gestures consisting of 28 isolated manual signs and 28 finger-spelling words, has been recorded involving 10 users. We have obtained an overall accuracy of 63.57% in real-time recognition of sign gestures.
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实时识别手语手势和空中书写使用跳跃运动
手语通常由三个主要部分组成,即用手或手指做出的手势,非手势,如面部表情或身体姿势,以及手指拼写,即用手势拼写单词以传达意思。在文献中,研究人员通过只关注手语的一部分提出了各种各样的手语识别系统。然而,不同部分的组合却没有太多的探索。在本文中,我们提出了一个使用Leap运动传感器识别手势和手指拼写的框架。在第一阶段,使用支持向量机(SVM)分类器来区分手动和手指拼写手势。接下来,两个BLSTM-NN分类器分别使用基于序列分类和基于序列转录的方法用于识别手动手势和手指拼写手势。一个包含2240个手势的数据集,包括28个孤立的手势和28个手指拼写单词,涉及10个用户。我们在手势的实时识别中获得了63.57%的总体准确率。
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