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引用次数: 3
摘要
这项工作的重点是对意大利语文本依赖的闭集说话人识别系统的性能分析。基于LPC和LPC-倒谱特征提取器和连续密度隐马尔可夫模型(CD-HMM)分类器的两种识别算法在意大利数据库SIVA the MUSER上实现并进行了测试。该数据库包括来自意大利不同地区的20位不同男性的360次通话记录。在CD-HMM分类器的不同训练集、不同口语单词和不同状态数下,对两种算法的误识别概率进行了评估。结果表明,在任何考虑的条件下,基于LPC-倒谱的系统都比基于LPC的系统性能更好,并且在最佳工作条件下,错误识别概率为1.5%左右。
CD-HMM algorithm performance for speaker identification on an Italian database
The focus of this work is on the performance analysis of a text dependent closed set speaker identification system for the Italian language. Two identification algorithms, based on LPC and LPC-cepstral feature extractors followed by a continuous density hidden Markov model (CD-HMM) classifier, have been implemented and tested on the Italian database SIVA the MUSER. The database consists of 360 phone calls made by 20 different male speakers from different Italian regions. The false identification probability for the two algorithms has been evaluated for different training sets, different spoken words and a variable number of states of the CD-HMM classifier. Results show that, in any of the considered conditions, the LPC-cepstral based system performs better than the LPC based one and that, in the best working condition, the false identification probability turns out to be of the order of 1.5 per cent.