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A weighted distance measure based on the fine structure of feature space: application to speaker recognition

机译:基于特征空间精细结构的加权距离度量:在说话人识别中的应用

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A weighted cepstral distance measure is proposed and tested in a speaker recognition system using a speaker-based vector quantization (VQ) approach. Based on the fine structure of the feature vector space, a statistically optimized distance measure is defined with weights equal to the partition-normalized inverse variance of cepstral coefficients. The weights can be adjusted individually for each partition and each component of the feature vector across all codebooks (speakers). Experiments on a 50-speaker database show that the suggested weighted cepstral distance measure works substantially better than the Euclidean cepstral distance or the inverse variance weighted cepstral distance. An accuracy of about 90% is achieved using a 16-level codebook in speaker verification.
机译:提出了加权倒谱距离测度,并使用基于说话者的矢量量化(VQ)方法在说话者识别系统中进行了测试。基于特征向量空间的精细结构,定义了统计优化的距离度量,其权重等于倒频谱系数的分区归一化逆方差。可以针对所有码本(扬声器)中的每个分区和特征向量的每个分量分别调整权重。在50个扬声器的数据库中进行的实验表明,建议的加权倒谱距离度量比欧几里得的倒谱距离或逆方差加权的倒谱距离效果更好。在说话者验证中使用16级密码本可达到约90%的准确度。

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