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首页> 外文期刊>International journal of cognitive informatics and natural intelligence >Important Attributes Selection Based on Rough Set for Speech Emotion Recognition
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Important Attributes Selection Based on Rough Set for Speech Emotion Recognition

机译:基于粗糙集的语音情感识别重要属性选择

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摘要

Speech emotion recognition is becoming more and more important in such computer application fields as health care, children education, etc. In order to improve the prediction performance or providing faster and more cost-ejjective recognition system, an attribute selection is often carried out beforehand to select the important attributes from the input attribute sets. However, it is time-consuming for traditional feature selection method used in speech emotion recognition to determine an optimum or suboptimum feature subset. Rough set theory offers an alternative, formal and methodology that can be employed to reduce the dimensionality of data. The purpose of this study is to investigate the effectiveness of Rough Set Theory in identifying important features in speech emotion recognition system. The experiments on CLDC emotion speech database clearly show this approach can reduce the calculation cost while retaining a suitable high recognition rate.
机译:语音情感识别在诸如医疗保健,儿童教育等计算机应用领域中变得越来越重要。为了提高预测性能或提供更快,更省钱的识别系统,通常需要预先进行属性选择,以提高识别性能。从输入属性集中选择重要属性。然而,对于语音情感识别中使用的传统特征选择方法来确定最佳或次最佳特征子集是费时的。粗糙集理论提供了另一种形式,形式和方法,可用于减少数据的维数。这项研究的目的是调查粗糙集理论在识别语音情感识别系统中重要特征方面的有效性。在CLDC情感语音数据库上的实验清楚地表明,该方法可以在保持适当的高识别率的同时降低计算成本。

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