Fuzzy C-Means Clustering and Sonification of HRV Features

Debanjan Borthakur, Victoria Grace, Paul Batchelor, Harishchandra Dubey
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引用次数: 5

Abstract

Linear and non-linear measures of heart rate variability (HRV) are widely investigated as non-invasive indicators of health. Stress has a profound impact on heart rate, and different meditation techniques have been found to modulate heartbeat rhythm. This paper aims to explore the process of identifying appropriate metrices from HRV analysis for sonification. Sonification is a type of auditory display involving the process of mapping data to acoustic parameters. This work explores the use of auditory display in aiding the analysis of HRV leveraged by unsupervised machine learning techniques. Unsupervised clustering helps select the appropriate features to improve the sonification interpretability. Vocal synthesis sonification techniques are employed to increase comprehension and learnability of the processed data displayed through sound. These analyses are early steps in building a real-time sound-based biofeedback training system.
HRV特征的模糊c均值聚类与超声
心率变异性(HRV)的线性和非线性测量作为健康的非侵入性指标被广泛研究。压力对心率有深远的影响,人们发现不同的冥想技巧可以调节心跳节奏。本文旨在探讨从HRV分析中确定合适的超声指标的过程。超声是一种听觉显示,涉及到将数据映射到声学参数的过程。这项工作探索了听觉显示在辅助无监督机器学习技术分析HRV中的应用。无监督聚类有助于选择合适的特征来提高声音的可解释性。声音合成超声技术被用来提高通过声音显示的处理数据的理解力和可学习性。这些分析是建立基于实时声音的生物反馈训练系统的早期步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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