C. Montacié, Paul Deléglise, F. Bimbot, Marie-José Caraty
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引用次数: 32
摘要
提出了语音信号频谱演化的时间分解和多元线性预测两种模型,能够处理语音变异性的某些方面。一系列声音解码实验,以使用时间分解技术的光谱目标和说话人依赖模式为特征,与参考系统相比(即70% vs. 60%的首选)获得了良好的结果。利用Laforia开发的原始方法,进行了一系列不依赖文本的说话人识别实验,并进行了长期的多元自回归建模,在不使用超过一个句子的情况下,获得了极好的结果(420个说话人的识别率为98.4%)。考虑到模型的解释,这些结果表明电影模型对于获得语音信号表示的降低可变性是多么有趣。
Cinematic techniques for speech processing: temporal decomposition and multivariate linear prediction
Two models, the temporal decomposition and the multivariate linear prediction, of the spectral evolution of speech signals capable of processing some aspects of the speech variability are presented. A series of acoustic-phonetic decoding experiments, characterized by the use of spectral targets of the temporal decomposition techniques and a speaker-dependent mode, gives good results compared to a reference system (i.e., 70% vs. 60% for the first choice). Using the original method developed by Laforia, a series of text-independent speaker recognition experiments, characterized by a long-term multivariate auto-regressive modelization, gives first-rate results (i.e., 98.4% recognition rate for 420 speakers) without using more than one sentence. Taking into account the interpretation of the models, these results show how interesting the cinematic models are for obtaining a reduced variability of the speech signal representation.<>