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Speech Emotion Recognition Using an Enhanced Kernel Isomap for Human-Robot Interaction

机译:使用增强型内核Isomap进行人机交互的语音情感识别

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Speech emotion recognition is currently an active research subject and has attracted extensive interest in the science community due to its vital application to human-robot interaction. Most speech emotion recognition systems employ high-dimensional speech features, indicating human emotion expression, to improve emotion recognition performance. To effectively reduce the size of speech features, in this paper, a new nonlinear dimensionality reduction method, called ‘enhanced kernel isometric mapping’ (EKIsomap), is proposed and applied for speech emotion recognition in human-robot interaction. The proposed method is used to nonlinearly extract the low-dimensional discriminating embedded data representations from the original high-dimensional speech features with a striking improvement of performance on the speech emotion recognition tasks. Experimental results on the popular Berlin emotional speech corpus demonstrate the effectiveness of the proposed method.
机译:语音情感识别目前是一门活跃的研究课题,由于其在人机交互中的重要应用,在科学界引起了广泛的兴趣。大多数语音情感识别系统采用高维语音特征来指示人类情感表达,以提高情感识别性能。为了有效地减小语音特征的大小,本文提出了一种新的非线性降维方法,称为“增强核等距映射”(EKIsomap),并将其应用于人机交互中的语音情感识别。该方法用于从原始的高维语音特征中非线性提取低维可区分嵌入数据表示,从而显着提高了语音情感识别任务的性能。在流行的柏林情感语音语料库上的实验结果证明了该方法的有效性。

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