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基于情绪的深度学习识别音乐的治疗效果

Using Deep Learning to Recognize Therapeutic Effects of Music Based on Emotions.

机构信息

Faculty of Electrical Engineering and Computer Science, Transilvania University of Brasov, 500036 Brasov, Romania.

Romanian Academy of Scientists, 050044 Bucharest, Romania.

出版信息

Sensors (Basel). 2023 Jan 14;23(2):986. doi: 10.3390/s23020986.

Abstract

Music is important in everyday life, and music therapy can help treat a variety of health issues. Music listening is a technique used by music therapists in various clinical treatments. As a result, music therapists must have an intelligent system at their disposal to assist and support them in selecting the most appropriate music for each patient. Previous research has not thoroughly addressed the relationship between music features and their effects on patients. The current paper focuses on identifying and predicting whether music has therapeutic benefits. A machine learning model is developed, using a multi-class neural network to classify emotions into four categories and then predict the output. The neural network developed has three layers: (i) an input layer with multiple features; (ii) a deep connected hidden layer; (iii) an output layer. K-Fold Cross Validation was used to assess the estimator. The experiment aims to create a machine-learning model that can predict whether a specific song has therapeutic effects on a specific person. The model considers a person's musical and emotional characteristics but is also trained to consider solfeggio frequencies. During the training phase, a subset of the Million Dataset is used. The user selects their favorite type of music and their current mood to allow the model to make a prediction. If the selected song is inappropriate, the application, using Machine Learning, recommends another type of music that may be useful for that specific user. An ongoing study is underway to validate the Machine Learning model. The developed system has been tested on many individuals. Because it achieved very good performance indicators, the proposed solution can be used by music therapists or even patients to select the appropriate song for their treatment.

摘要

音乐在日常生活中很重要,音乐疗法可以帮助治疗各种健康问题。音乐聆听是音乐治疗师在各种临床治疗中使用的一种技术。因此,音乐治疗师必须有一个智能系统来协助和支持他们为每个患者选择最合适的音乐。以前的研究并没有彻底解决音乐特征与其对患者影响之间的关系。本文专注于识别和预测音乐是否具有治疗益处。开发了一种机器学习模型,使用多类神经网络将情绪分为四类,然后预测输出。开发的神经网络有三个层次:(i)具有多个特征的输入层;(ii)深层连接隐藏层;(iii)输出层。使用 K 折交叉验证来评估估计器。实验旨在创建一个可以预测特定歌曲对特定人是否具有治疗效果的机器学习模型。该模型考虑了一个人的音乐和情感特征,但也经过训练以考虑 solfeggio 频率。在训练阶段,使用百万数据集的一个子集。用户选择他们喜欢的音乐类型和当前的情绪,以便模型进行预测。如果所选歌曲不合适,应用程序将使用机器学习推荐另一首可能对特定用户有用的音乐类型。目前正在进行一项研究来验证机器学习模型。该系统已经在许多人身上进行了测试。由于它取得了非常好的性能指标,因此建议的解决方案可以由音乐治疗师甚至患者使用,为他们的治疗选择合适的歌曲。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ca95/9861051/f96fac210dd1/sensors-23-00986-g001.jpg

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