Human-centric music medical therapy exploration system

Baixi Xing, Ke-jun Zhang, Lekai Zhang, E. Lua, Shouqian Sun
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引用次数: 1

Abstract

Music emotion analytic is useful for many human-centric applications such as medical intervention. Existing studies have shown that music is a low risk, adjunctive and therapeutic medical intervention. However, there is little existing research about the types of music with identified emotions that have the most effect for different medical applications. We would like to discover various music emotions through machine learning analytic so as to identify modelsof how music conveys emotion features, and determine its effectiveness for medical intervention and treatment. We are developing a Human-centric Music Medical Therapy Exploration System which could recognize music emotion features from Chinese Folk Music Library, and recommend suitable music to playback for medical intervention and treatment. Our networked system is based on Support Vector Machine(SVM) algorithm to construct the models for music emotion recognition and information retrieval. Our main contributions are as follows: Firstly, we built up the Chinese folk music emotions and features library; secondly, we conducted evaluation and comparison with other algorithms such as Back Propagation(BP) and Linear Regression to set up the model construction for music emotion recognition and proved that SVM has the best performance; lastly, we integrated blood pressure and heartbeat data analytic into our system to visualize the emotion fluctuation in different music affection and make recommendation for suitable humancentric music medical therapy for hypertensive patients.
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以人为本的音乐医疗探索系统
音乐情感分析对许多以人为中心的应用很有用,比如医疗干预。现有研究表明,音乐是一种低风险的辅助治疗性医学干预。然而,目前很少有研究表明,哪种类型的音乐具有确定的情绪,对不同的医学应用有最大的影响。我们希望通过机器学习分析来发现各种音乐情感,从而识别音乐如何传达情感特征的模型,并确定其在医疗干预和治疗中的有效性。我们正在开发一个以人为本的音乐医疗探索系统,该系统可以识别中国民乐库中的音乐情感特征,并推荐适合的音乐进行回放,以进行医疗干预和治疗。我们的网络系统基于支持向量机(SVM)算法来构建音乐情感识别和信息检索的模型。我们的主要贡献有:一是建立了中国民族音乐情感特征库;其次,与BP、线性回归等算法进行评价比较,建立音乐情感识别的模型,证明SVM具有最佳的识别性能;最后,我们将血压和心跳数据分析整合到我们的系统中,可视化不同音乐情感的情绪波动,为高血压患者推荐适合的以人为本的音乐医学治疗。
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Session details: 2nd keynote address Downton abbey without the hiccups: buffer-based rate adaptation for HTTP video streaming Session details: Future human-centric multimedia networking I Proceedings of the 2013 ACM SIGCOMM workshop on Future human-centric multimedia networking Session details: 1st keynote address
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