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N-Best Rescoring for Speech Recognition using Penalized Logistic Regression Machines with Garbage Class

机译:使用垃圾分类的惩罚Logistic回归机器进行语音识别的N最佳记录

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State-of-the-art pattern recognition approaches like neural networks or kernel methods have only had limited success in speech recognition. The difficulties often encountered include the varying lengths of speech signals as well as how to deal with sequences of labels (e.g., digit strings) and unknown segmentation. In this paper we present a combined hidden Markov model (HMM) and penalized logistic regression machine (PLRM) approach to continuous speech recognition that can cope with both of these difficulties. The key ingredients of our approach are N-best rescoring and PLRM with garbage class. Experiments on the Aurora2 connected digits database show significant increase in recognition accuracy relative to a purely HMM-based system
机译:最先进的模式识别方法(如神经网络或核方法)在语音识别方面仅取得了有限的成功。经常遇到的困难包括语音信号长度的变化以及如何处理标签序列(例如,数字串)和未知的分段。在本文中,我们提出了一种结合隐马尔可夫模型(HMM)和惩罚逻辑回归机(PLRM)的方法来进行连续语音识别,可以同时解决这两个难题。我们方法的关键要素是N级最佳记录和具有垃圾分类的PLRM。在Aurora2关联数字数据库上进行的实验表明,相对于纯粹基于HMM的系统,识别准确度有了显着提高

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