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SPEECH EMOTION RECOGNITION METHOD BASED ON IMPROVED DECISION TREE AND LAYERED FEATURE SELECTION

机译:基于改进决策树和分层特征选择的语音情感识别方法

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摘要

In this paper, in order to improve the classification accuracy with features as few as possible, a new hierarchical recognition method based on an improved SVM decision tree and the layered feature selection method combining neural network with genetic algorithm are proposed. The improved SVM decision tree is constructed according to confusion degrees between two emotions or those between two emotion groups. The classifier in each node of the improved decision tree is a SVM. On the emotional speech corpus recorded by our workgroup including 7 emotions, with the features and parameters gotten by the method combining neural network with genetic algorithm, improved SVM decision tree, multi-SVM, SVM-based binary decision tree, the traditional SVM-based decision directed acyclic graph and HMM are evaluated respectively. The experiments reveal that, compared with the other four methods, the proposed method in this paper appears better classification accuracy with fewer features and less time.
机译:为了尽可能减少特征的分类精度,提出了一种基于改进的支持向量机决策树的层次识别方法和将神经网络与遗传算法相结合的分层特征选择方法。根据两个情绪之间或两个情绪组之间的混淆程度构造改进的SVM决策树。改进的决策树的每个节点中的分类器是SVM。在我们的工作组记录的包含7种情绪的语音语料库上,利用神经网络与遗传算法相结合的方法,改进的SVM决策树,multi-SVM,基于SVM的二元决策树,基于传统SVM的方法获得的特征和参数分别评估决策有向无环图和HMM。实验表明,与其他四种方法相比,本文提出的方法具有更好的分类准确率,更少的特征和更少的时间。

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