Generative Kernels and Score-Spaces for Classication of Speech: Progress Report ii
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چکیده
January is is the second progress report for Project /// (Generative Kernels and Score Spaces for Classiication of Speech) within the Global Uncertainties Programme. is project combines the current generative models developed in the speech community with discriminative classiiers. An important aspect of the approach is that the generative models are used to deene a score-space that can be used as features by the discriminative classiiers. is work reports progress on eecient computation of generative scores, and two viarants of support vector machines for speech recognition.
منابع مشابه
Generative Kernels and Score-Spaces for Classication of Speech: Progress Report
January is is the rst progress report for Project /// (Generative Kernels and Score Spaces for Classiication of Speech) within the Global Uncertainties Programme. is project combines the current generative models developed in the speech community with discriminative classiiers. An important aspect of the approach is that the generative models are used to deene a score-space that can be used as ...
متن کاملGenerative Kernels and Score-Spaces for Classication of Speech: Progress Report iii
May is is the third and nal progress report for Project /// (Generative Kernels and Score Spaces for Classiication of Speech) within the Global Uncertainties Programme. is project combines the current generative models developed in the speech community with discriminative classiiers. An important aspect of the approach is that the generative models are used to deene a score-space that can be us...
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تاریخ انتشار 2013