Support vector machines for speaker verification and identification 论文

2002引用 232
Speech Recognition and SynthesisSpeech and Audio ProcessingAdvanced Data Compression Techniques

摘要

The performance of the support vector machine (SVM) on a speaker verification task is assessed. Since speaker verification requires binary decisions, support vector machines seem to be a promising candidate to perform the task. A new technique for normalising the polynomial kernel is developed and used to achieve performance comparable to other classifiers on the YOHO database. We also present results on a speaker identification task.