Lin Qin
Art College of Guizhou University of Finance and Economics, Guiyang 550001, Guizhou, China.
Comput Intell Neurosci. 2022 Jul 7;2022:3022767. doi: 10.1155/2022/3022767. eCollection 2022.
In recent years, the recommendation application of artificial intelligence and deep music has gradually become a research hotspot. As a complex machine learning algorithm, deep learning can extract features with value laws through training samples. The rise of deep learning network will promote the development of artificial intelligence and also provide a new idea for music score recognition. In this paper, the improved deep learning algorithm is applied to the research of music score recognition. Based on the traditional neural network, the attention weight value improved convolutional neural network (CNN) and high execution efficiency deep belief network (DBN) are introduced to realize the feature extraction and intelligent recognition of music score. Taking the feature vector set extracted by CNN-DBN as input set, a feature learning algorithm based on CNN&DBN was established to extract music score. Experiments show that the proposed model in a variety of different types of polyphony music recognition showed more accurate recognition and good performance; the recognition rate of the improved algorithm applied to the soundtrack identification is as high as 98.4%, which is significantly better than those of other classic algorithms, proving that CNN&DBN can achieve better effect in music information retrieval. It provides data support for constructing knowledge graph in music field and indicates that deep learning has great research value in music retrieval field.
近年来,人工智能与深度音乐的推荐应用逐渐成为研究热点。深度学习作为一种复杂的机器学习算法,能够通过训练样本提取具有价值规律的特征。深度学习网络的兴起推动了人工智能的发展,也为乐谱识别提供了新思路。本文将改进的深度学习算法应用于乐谱识别研究。在传统神经网络的基础上,引入注意力权重值改进卷积神经网络(CNN)和高执行效率深度信念网络(DBN),实现乐谱的特征提取与智能识别。以CNN-DBN提取的特征向量集作为输入集,建立了基于CNN&DBN的特征学习算法来提取乐谱。实验表明,所提模型在多种不同类型的复调音乐识别中表现出更准确的识别效果和良好的性能;改进算法应用于音轨识别的识别率高达98.4%,显著优于其他经典算法,证明CNN&DBN在音乐信息检索中能取得更好的效果。它为音乐领域构建知识图谱提供了数据支持,表明深度学习在音乐检索领域具有很大的研究价值。