一种先进的自相似度量:水平对赫斯特指数估计(ALPHEE)的平均值。

IF 4.4 2区 医学 Q2 ENGINEERING, BIOMEDICAL
Dixon Vimalajeewa, Raymond J Hinton, Fabrizio Ruggeri, Brani Vidakovic
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引用次数: 0

摘要

许多自然过程的特点是复杂的自相似模式,其中重复的结构发生在不同的分辨率。赫斯特指数是用来量化这种自相似性的关键参数。虽然基于小波的技术在估计Hurst指数方面是有效的,但它们的性能可能会受到噪声、异常值和建模假设的影响。本研究提出了一种在标准建模假设下估计Hurst指数的新方法,并将该方法应用于步态数据的重要研究。这种新方法利用小波变换(WT)来改进传统的自相似性评估,传统的自相似性评估通常依赖于不同分辨率下信号能量的规律衰减。我们的方法将标准分数布朗运动(fBm)模型与小波系数的精确概率分布相结合,将小波分解水平对Hurst指数的估计合并为一个单一的估计,称为ALPHEE,提供了更精确的自相似性度量。该研究调查了在机器学习算法中使用自相似特征来识别无意跌倒的老年人。通过对147名受试者(79名跌倒者,68名非跌倒者)的线性加速度(LA)和角速度(AV)的分析,研究发现跌倒者的线性加速度和角速度具有更高的规律性。比较了使用和不使用自相似特征的分类模型的性能,表明这些特征增强了对落点的检测。结果表明,整合自相似特征显著提高了性能,该方法的准确率达到89.65%,而标准方法的准确率为82.75%。这一改进超越了基于相同数据集的现有研究,表明所提出的方法更准确地捕获自相似属性,从而在步态数据分析中获得更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Advanced Self-similarity Measure: Average of Level-Pairwise Hurst Exponent Estimates (ALPHEE).

Many natural processes are characterized by complex patterns of self-similarity, where repetitive structures occur across different resolutions. The Hurst exponent is a key parameter used to quantify this self-similarity. While wavelet-based techniques are effective in estimating the Hurst exponent, their performance can be compromised by noise, outliers, and modeling assumptions. This study makes a dual contribution by introducing a novel method for estimating the Hurst exponent under standard modeling assumptions and applying this method to a significant study on gait data. The novel method leverages wavelet transforms (WT) to refine the traditional assessment of self-similarity, which typically depends on the regular decay of signal energies at various resolutions. Our method integrates the standard fractional Brownian motion (fBm) model with exact probability distributions of wavelet coefficients, combining estimates of the Hurst exponent from pairs of wavelet decomposition levels into a single estimate, named ALPHEE, that offers a more precise measure of self-similarity. The study investigates the use of self-similarity features in machine learning algorithms for identifying elderly adults who have had unintentional falls. By analyzing linear acceleration (LA) and angular velocity (AV) in 147 subjects (79 fallers, 68 non-fallers), the study finds higher regularity in LA and AV for fallers. The performance of classification models is compared with and without self-similarity features, suggesting these features enhance the detection of fallers versus non-fallers. The results show that integrating self-similarity features significantly improves performance, with the proposed method achieving 89.65% accuracy, compared to 82.75% using the standard method. This improvement surpasses existing studies based on the same dataset, suggesting that the proposed method more accurately captures self-similar properties, leading to better performance in gait data analysis.

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来源期刊
IEEE Transactions on Biomedical Engineering
IEEE Transactions on Biomedical Engineering 工程技术-工程:生物医学
CiteScore
9.40
自引率
4.30%
发文量
880
审稿时长
2.5 months
期刊介绍: IEEE Transactions on Biomedical Engineering contains basic and applied papers dealing with biomedical engineering. Papers range from engineering development in methods and techniques with biomedical applications to experimental and clinical investigations with engineering contributions.
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