IEEE J Biomed Health Inform. 2022 Jul;26(7):2888-2897. doi: 10.1109/JBHI.2022.3142034. Epub 2022 Jul 1.
Efficient storage and transmission of electromyogram (EMG) data are important for emerging applications such as telemedicine and big data, as a vital tool for further advancement of the field. However, due to limitations in internet speed and hardware resources, transmission and storage of EMG data are challenging. As a solution, this work proposes a new method for EMG data compression using deep convolutional autoencoders (CAE). Eight-channel EMG data from 10 subjects, and high-density EMG data from 18 subjects, were investigated for compression. The CAE architecture was designed to extract an abstract data representation that is heavily compressed, but from which the salient information for classification can be effectively reconstructed. The proposed method attained efficient compression; for CR = 1600, the average PRDN (percentage RMS difference normalized) was 31.5% and the wrist motions classification accuracy (CA) reduced roughly 5%. The CAE substantially outperformed the state-of-the-art high-efficiency video coding and a well-known wavelet-thresholding compression technique. Moreover, by reducing the bit-resolution of the CAE's compressed data from 24 bits to 6 bits, an additional 4-fold compression was achieved without significant degradation of the reconstruction performance. Furthermore, the CAE's inter-subject performance was promising; e.g., for CR = 1600, the PRDN for the inter-subject case was only 2.6% less than that of the within-subject performance. The powerful EMG compression performance with remarkable reconstruction results reflects the CAEs potential as an automatic end-to-end approach with the ability to learn the complete encoding and decoding process. Furthermore, the excellent inter-subject performance demonstrates the generalizability and usability of the proposed approach.
高效存储和传输肌电图 (EMG) 数据对于远程医疗和大数据等新兴应用至关重要,是该领域进一步发展的重要工具。然而,由于互联网速度和硬件资源的限制,EMG 数据的传输和存储具有挑战性。为此,这项工作提出了一种使用深度卷积自动编码器 (CAE) 对 EMG 数据进行压缩的新方法。研究了来自 10 个对象的 8 通道 EMG 数据和来自 18 个对象的高密度 EMG 数据的压缩。CAE 架构旨在提取高度压缩的抽象数据表示,从中可以有效重建用于分类的显著信息。所提出的方法实现了高效压缩;对于 CR = 1600,平均 PRDN(均方根差归一化百分比)为 31.5%,腕部运动分类准确性 (CA) 降低约 5%。CAE 大大优于最先进的高效视频编码和知名的小波阈值压缩技术。此外,通过将 CAE 压缩数据的位分辨率从 24 位降低到 6 位,可以在不显著降低重建性能的情况下再实现 4 倍的压缩。此外,CAE 的跨主体性能很有前景;例如,对于 CR = 1600,跨主体情况下的 PRDN 仅比主体内性能低 2.6%。强大的 EMG 压缩性能和显著的重建结果反映了 CAE 作为一种自动端到端方法的潜力,它能够学习完整的编码和解码过程。此外,出色的跨主体性能证明了所提出方法的通用性和可用性。