Relevant features for video-based continuous sign language recognition

Britta Bauer, Hermann Hienz
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引用次数: 143

Abstract

This paper describes the development of a video-based continuous sign language recognition system. The system is based on continuous density hidden Markov models (HMM) with one model for each sign. Feature vectors reflecting manual sign parameters serve as input for training and recognition. To reduce computational complexity during the recognition task beam search is employed. The system aims for an automatic signer-dependent recognition of sign language sentences, based on a lexicon of 97 signs of German sign language (GSL). A further colour video camera is used for image recording. Furthermore the influence of different features reflecting different manual sign parameters on the recognition results are examined. Results are given for varying sized vocabulary. The system achieves an accuracy of 91.7% based on a lexicon of 97 signs.
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基于视频的连续手语识别的相关特征
本文介绍了一种基于视频的连续手语识别系统的开发。该系统基于连续密度隐马尔可夫模型(HMM),每个符号一个模型。反映手势参数的特征向量作为训练和识别的输入。为了降低识别过程中的计算复杂度,采用了波束搜索。该系统的目标是基于德国手语(GSL)的97个符号的词典,自动识别依赖于手势的手语句子。另一个彩色摄像机用于图像记录。此外,还考察了反映不同手势参数的不同特征对识别结果的影响。对于不同大小的词汇表给出了结果。基于97个符号的词典,该系统达到了91.7%的准确率。
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