基于人工智能和物联网数据挖掘的高效音乐分析机制

IF 0.9 Q4 TELECOMMUNICATIONS Internet Technology Letters Pub Date : 2023-05-16 DOI:10.1002/itl2.436
Minglong Wang, Daohua Pan
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引用次数: 0

摘要

戏曲音乐蕴含着深厚的中国文化。随着深度学习和物联网技术的发展,越来越多的研究利用神经网络来取代传统的声学模型。本文利用前沿的研究方法探索了秦腔的情感分类。首先,我们改进了卷积神经网络,采用残差网络模型来提高模型的拟合度和稳定性。其次,整合注意力机制,强化各权重信息的表达,让网络更有效地区分特征信息,提升网络的整体性能。第三,利用五个传感器组成本地物联网,采集大量秦腔音频数据进行实验。最后,多个实验证实了所提模型在秦腔情感分类中的有效性。
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Efficient music analysis mechanism based on AI and IoT data mining

Chinese culture is depicted in a profound manner through opera music. With the advancements in deep learning and IoT technology, numerous studies have increasingly utilized neural networks to supersede conventional acoustic models. This paper explores the emotion classification of Qinqiang Opera through the utilization of cutting-edge research methods. Firstly, we improve the convolutional neural network and adopt the residual network model to increase the model's fitting and stability. Secondly, the attention mechanism is integrated to reinforce the expression of each weight information, allowing the network to differentiate feature information more effectively and elevating the overall performance of the network. Thirdly, we use five sensors to form a local Internet of Things to collect a large amount of Qin opera audio data for experiments. Finally, multiple experiments confirm the effectiveness of the proposed model in the emotional classification of Qinqiang Opera.

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