Review of various feature extraction approaches for ERG signal analysis: Advantages and drawbacks

None Aws M Abdullah, None Ali R Ibrahim, None Ammar A Al-Hamadani, None Mohammed K Al-Obaidi, None Anas F Ahmed
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Abstract

This article presents a comprehensive examination of various techniques used to extract features from Electroretinogram (ERG) signals for analysis purposes. ERG signals are crucial in the diagnosis and study of retinal diseases. The accurate extraction of informative features from ERG signals is vital for understanding retinal function and identifying abnormalities. This review specifically focuses on different methods employed for feature extraction in ERG signal analysis, highlighting their respective advantages and disadvantages. The article explores a range of established methods, namely time-domain, frequency-domain, time-frequency domain analysis, and machine learning delves into the difficulties and constraints linked to these strategies, such as signal noise, artifacts, and computational complexity. Its objective is to offer a thorough evaluation of the merits and drawbacks of diverse feature extraction techniques, with the aim of aiding researchers and clinicians in their selection of suitable methods for the analysis of ERG signals.
ERG信号分析的各种特征提取方法综述:优缺点
本文介绍了用于提取视网膜电图(ERG)信号特征用于分析目的的各种技术的综合检查。ERG信号在视网膜疾病的诊断和研究中至关重要。从ERG信号中准确提取信息特征对于理解视网膜功能和识别异常至关重要。本文重点介绍了ERG信号分析中特征提取的不同方法,并指出了它们各自的优缺点。本文探讨了一系列已建立的方法,即时域、频域、时频域分析和机器学习,深入研究了与这些策略相关的困难和限制,如信号噪声、伪影和计算复杂性。其目的是对各种特征提取技术的优缺点进行全面评估,以帮助研究人员和临床医生选择合适的方法来分析ERG信号。
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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