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Hybrid Models for Automatic SpeechRecognition: A Comparison of Classical ANN and Kernel Based Methods

机译:自动语音识别的混合模型:经典ANN和基于内核的方法的比较

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摘要

Support Vector Machines (SVMs) are state-of-the-art methods for machine learning but share with more classical Artificial Neural Networks (ANNs) the difficulty of their application to input patterns of non-fixed dimension. This is the case in Automatic Speech Recognition (ASR), in which the duration of the speech utterances is variable. In this paper we have recalled the hybrid (ANN/HMM) solutions provided in the past for ANNs and applied them to SVMs performing a comparison between them. We have experimentally assessed both hybrid systems with respect to the standard HMM-based ASR system, for several noisy environments. On the one hand, the ANN/HMM system provides better results than the HMM-based system. On the other, the results achieved by the SVM/HMM system are slightly lower than those of the HMM system. Nevertheless, such a results are encouraging due to the current limitations of the SVM/HMM system.
机译:支持向量机(SVM)是机器学习的最先进方法,但与更经典的人工神经网络(ANN)共享将其应用于非固定维输入模式的困难。在自动语音识别(ASR)中就是这种情况,其中语音的持续时间是可变的。在本文中,我们回顾了过去为ANN提供的混合(ANN / HMM)解决方案,并将其应用于支持向量机(SVM),以进行比较。对于几种嘈杂的环境,我们已经针对基于HMM的标准ASR系统对两种混合动力系统进行了实验评估。一方面,与基于HMM的系统相比,ANN / HMM系统提供了更好的结果。另一方面,SVM / HMM系统获得的结果略低于HMM系统。然而,由于SVM / HMM系统的当前限制,这样的结果令人鼓舞。

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