Research on algorithm composition and emotion recognition based on adaptive networks
Author:
Hou Shuxin1, Wang Ning2, Su Baoming1
Affiliation:
1. 1 School of Music , Linyi University , Linyi , Shandong , , China . 2. 2 Theory Teaching and Research Department , School of Music, Linyi University , Linyi , Shandong , , China .
Abstract
Abstract
Adaptive linear neural networks lay the foundation for the development of the uniqueness of algorithmic composition and emotion recognition. In this paper, we first analyze the process of emotion recognition and the development of algorithmic compositions to establish the emotion recognition dataset. Secondly, the algorithm of the adaptive linear neural network is selected, including the analysis of the adaptive linear neuron model and gradient and most rapid descent method and LMS algorithm. The analysis focuses on the LMS algorithm flow, convergence conditions and performance parameters of the LMS algorithm. Finally, the sentiment recognition results of four models, SVM, CNN, LSTM and Adaline neural network, based on different dimensional self-encoder features, are analyzed. To verify whether the classification method of self-encoder + Adaline neural network can find the information connection between various emotions and improve the efficiency of emotion recognition. The classification method of self-encoder + Adaline neural network can improve the recognition rate by up to 85% for noise-reducing self-encoder features in 500 dimensions.
Publisher
Walter de Gruyter GmbH
Subject
Applied Mathematics,Engineering (miscellaneous),Modeling and Simulation,General Computer Science
Reference20 articles.
1. Herremans, D., Chuan, C. H., & Chew, E. (2017). A functional taxonomy of music generation systems. ACM Computing Surveys (CSUR), 50(5), 69.1-69.30. 2. Kirke, A. J. (2019). Applying quantum hardware to non-scientific problems: grover’s algorithm and rule-based algorithmic music composition. International journal of unconventional computing, 14(3/4), 349-374. 3. Nw, A., Hui, X. B., Feng, X. C., & Lei, C. D. (2021). The algorithmic composition for music copyright protection under deep learning and blockchain. Applied Soft Computing. 4. Jenke, R., Peer, A., & Buss, M. (2017). Feature extraction and selection for emotion recognition from eeg. IEEE Transactions on Affective Computing, 5(3), 327-339. 5. Berggren, S., Fletcher-Watson, S., Milenkovic, N., Marschik, P. B., B? Lte, S., & Jonsson, U. (2017). Emotion recognition training in autism spectrum disorder: a systematic review of challenges related to generalizability. Developmental Neurorehabilitation, 1-14.
|
|