发明名称 Sparse representation features for speech recognition
摘要 Techniques are disclosed for generating and using sparse representation features to improve speech recognition performance. In particular, principles of the invention provide sparse representation exemplar-based recognition techniques. For example, a method comprises the following steps. A test vector and a training data set associated with a speech recognition system are obtained. A subset of the training data set is selected. The test vector is mapped with the selected subset of the training data set as a linear combination that is weighted by a sparseness constraint such that a new test feature set is formed wherein the training data set is moved more closely to the test vector subject to the sparseness constraint. An acoustic model is trained on the new test feature set. The acoustic model trained on the new test feature set may be used to decode user speech input to the speech recognition system.
申请公布号 US8484023(B2) 申请公布日期 2013.07.09
申请号 US20100889845 申请日期 2010.09.24
申请人 KANEVSKY DIMITRI;NAHAMOO DAVID;RAMABHADRAN BHUVANA;SAINATH TARA N.;NUANCE COMMUNICATIONS, INC. 发明人 KANEVSKY DIMITRI;NAHAMOO DAVID;RAMABHADRAN BHUVANA;SAINATH TARA N.
分类号 G10L15/06 主分类号 G10L15/06
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