全面回顾用于 sEMG 信号分类的特征提取技术:从手工特征到深度学习方法

IF 5.6 4区 医学 Q1 ENGINEERING, BIOMEDICAL
Irbm Pub Date : 2024-11-05 DOI:10.1016/j.irbm.2024.100866
Sidi Mohamed Sid'El Moctar, Imad Rida, Sofiane Boudaoud
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引用次数: 0

摘要

表面肌电图(sEMG)已成为假肢控制和神经肌肉骨骼系统临床评估等多个领域的重要工具。近年来,机器学习和深度学习技术在 sEMG 信号分类中的应用受到了广泛关注。本综述详细探讨了用于 sEMG 分类的特征提取方法,包括传统的手工特征和学习特征。材料与方法该调查涵盖了用于 sEMG 分类的各种特征提取技术,包括信号采集、预处理以及传统机器学习和深度学习分类器的应用。它提供了分类标准、定义和性能比较,使研究人员对当前的方法有了广泛的了解。结果人工特征与传统机器学习分类器相结合,表现出很强的性能,尤其是在较小的数据集上。然而,尽管在数据可用性和模型可解释性方面存在挑战,深度学习技术在许多应用中都显示出了卓越的效果。本调查强调了有关这两种方法性能的主要发现。 结论 本研究弥补了用于 sEMG 信号分类的传统特征提取技术与学习特征提取技术之间的差距。它为研究人员和从业人员提供了宝贵的资源,提出了指导未来进步的见解。未来研究的关键领域包括解决深度学习中的数据稀缺问题,以及提高模型在临床应用中的可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Comprehensive Review of Feature Extraction Techniques for sEMG Signal Classification: From Handcrafted Features to Deep Learning Approaches

Comprehensive Review of Feature Extraction Techniques for sEMG Signal Classification: From Handcrafted Features to Deep Learning Approaches
Surface Electromyography (sEMG) has become an essential tool in various fields, including prosthetic control and clinical evaluation of the neuromusculoskeletal system. In recent years, the application of machine learning and deep learning techniques to sEMG signal classification has gained significant interest. This survey provides a detailed exploration of feature extraction methods for sEMG classification, from traditional handcrafted features to learned features.

Objectives

This review aims to provide a comprehensive overview of feature extraction techniques for sEMG signal classification, focusing on both handcrafted and learned features. It seeks to advance research by offering a deeper understanding of fundamental concepts in sEMG signal analysis, along with comparisons and summaries of state-of-the-art approaches.

Materials and Methods

The survey covers various feature extraction techniques used for sEMG classification, including signal acquisition, preprocessing, and the application of conventional machine learning and deep learning classifiers. It offers taxonomies, definitions, and performance comparisons, equipping researchers with a broad understanding of current methodologies.

Results

Handcrafted features combined with traditional machine learning classifiers have demonstrated strong performance, especially with smaller datasets. However, deep learning techniques have shown superior results in many applications, despite challenges related to data availability and model interpretability. The survey highlights key findings regarding the performance of both approaches.

Conclusion

This study bridges the gap between traditional and learned feature extraction techniques for sEMG signal classification. It provides a valuable resource for researchers and practitioners, offering insights that can guide future advancements. Key areas for future research include addressing data scarcity in deep learning and improving model interpretability for clinical applications.
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来源期刊
Irbm
Irbm ENGINEERING, BIOMEDICAL-
CiteScore
10.30
自引率
4.20%
发文量
81
审稿时长
57 days
期刊介绍: IRBM is the journal of the AGBM (Alliance for engineering in Biology an Medicine / Alliance pour le génie biologique et médical) and the SFGBM (BioMedical Engineering French Society / Société française de génie biologique médical) and the AFIB (French Association of Biomedical Engineers / Association française des ingénieurs biomédicaux). As a vehicle of information and knowledge in the field of biomedical technologies, IRBM is devoted to fundamental as well as clinical research. Biomedical engineering and use of new technologies are the cornerstones of IRBM, providing authors and users with the latest information. Its six issues per year propose reviews (state-of-the-art and current knowledge), original articles directed at fundamental research and articles focusing on biomedical engineering. All articles are submitted to peer reviewers acting as guarantors for IRBM''s scientific and medical content. The field covered by IRBM includes all the discipline of Biomedical engineering. Thereby, the type of papers published include those that cover the technological and methodological development in: -Physiological and Biological Signal processing (EEG, MEG, ECG…)- Medical Image processing- Biomechanics- Biomaterials- Medical Physics- Biophysics- Physiological and Biological Sensors- Information technologies in healthcare- Disability research- Computational physiology- …
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