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Deep Learning for Emotional Speech Recognition

机译:深度学习用于情感语音识别

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Emotional speech recognition is a multidisciplinary research area that has received increasing attention over the last few years. The present paper considers the application of restricted Boltzmann machines (RBM) and deep belief networks (DBN) to the difficult task of automatic Spanish emotional speech recognition. The principal motivation lies in the success reported in a growing body of work employing these techniques as alternatives to traditional methods in speech processing and speech recognition. Here a well-known Spanish emotional speech database is used in order to extensively experiment with, and compare, different combinations of parameters and classifiers. It is found that with a suitable choice of parameters, RBM and DBN can achieve comparable results to other classifiers.
机译:情感语音识别是一个多学科的研究领域,最近几年受到越来越多的关注。本文考虑了限制玻尔兹曼机(RBM)和深度信念网络(DBN)在西班牙自动情感语音识别这一艰巨任务中的应用。其主要动机在于,在将这些技术用作语音处理和语音识别中传统方法的替代方法的不断壮大的工作中取得成功的报道。在这里,一个著名的西班牙情感语音数据库被用来广泛地试验和比较参数和分类器的不同组合。据发现,用的参数的适当选择,RBM和DBN可以实现可比较的结果到其它分类。

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