基于hmm的视觉语音识别系统的唇部特征提取与约简

S. Alizadeh, R. Boostani, V. Asadpour
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引用次数: 25

摘要

唇读是视听语音识别系统的一个重要组成部分,语音识别系统经常面临特征提取冗余的问题。本文提出了一种通过提取判别特征来提高唇读性能的新方法。通过这种方式,首先检测人脸;然后,提取唇形关键点,用四次曲线表征唇形轮廓;接下来,从每一帧的轮廓中提取视觉特征。为了区分每个语音单元(词)和其他的,该语音单元帧的特征被安排在一个特征向量中。此外,利用每帧特征与前k帧特征的差异来构建更多信息的特征向量。为了解决小样本量问题,采用直接线性判别分析(D-LDA)减小特征尺寸。为了对这些变换后的特征进行分类,使用隐马尔可夫模型(HMM)对语音单元进行识别。将该算法应用于M2VTS数据库。结果表明,与不进行特征约简的HMM相比,使用D-LDA进行特征约简具有更好的分类精度。
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Lip feature extraction and reduction for HMM-based visual speech recognition systems
Lipreading is a main part of audio-visual speech recognition systems which are mostly faced with redundancy of extracted features. In this paper, a new approach has been proposed to increase the lipreading performance by extraction of discriminant features. In this way, first, faces are detected; then, lip key points are extracted in which four cubic curves characterize lip contours. Next, the visual features are extracted from the contours for each frame. To discriminate each speech unit (word) from others, features of that speech unit frames are arranged in a feature vector. Moreover, differences of each frame features from k previous frame features are used to construct more informative feature vectors. To solve the small sample size problem, direct linear discriminant analysis (D-LDA) is employed to reduce the feature size. To classify these transformed features, hidden Markov model (HMM) is used to recognize the speech units. The proposed algorithm was applied on M2VTS database. Results show that applying of D-LDA for feature reduction provides the better classification accuracy compare to employ HMM without feature reduction.
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