Performance evaluation of deep autoencoder network for speech emotion recognition

被引:0
|
作者
AndleebSiddiqui M. [1 ]
Hussain W. [2 ]
Ali S.A. [3 ]
Danish-ur-Rehman [4 ]
机构
[1] Computer Science and Information Technology, N.E. D University of Engineering and Technology, Karachi
[2] Karachi Shipyard and Engineering Works Ltd, Karachi
[3] Computer and Information Systems Engineering, N.E. D University of Engineering and Technology, Karachi
[4] Electronics Engineering, N.E. D University of Engineering and Technology, Karachi
关键词
Autism; Auto-encoder; Classification accuracy; DNN; Emotions;
D O I
10.14569/ijacsa.2020.0110276
中图分类号
学科分类号
摘要
The learning methods with multiple levels of representation is called deep learning methods. The composition of simple but now linear modules results in deep-learning model. Deep-learning in near future will have many more success, because it requires very little engineering in hands and it can easily take ample amount of data for computation. In this paper the deep learning network is used to recognize speech emotions. The deep Autoencoder is constructed to learn the speech emotions (Angry, Happy, Neutral, and Sad) of Normal and Autistic Children. Experimental results evident that the categorical classification accuracy of speech is 46.5% and 33.3% for Normal and Autistic children speech respectively. Whereas, Auto encoder shows a very low classification accuracy of 26.1% for only happy emotion and no classification accuracy for Angry, Neutral and Sad emotions. © Science and Information Organization.
引用
收藏
页码:606 / 611
页数:5
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