Cascaded Thinning in Upscale and Downscale Representation for EEG Signal Processing

IF 4.8 2区 医学 Q2 ENGINEERING, BIOMEDICAL IEEE Transactions on Neural Systems and Rehabilitation Engineering Pub Date : 2024-09-25 DOI:10.1109/TNSRE.2024.3465515
Quang Manh Doan;Tran Hiep Dinh;Avinash Kumar Singh;Chin-Teng Lin;Nguyen Linh Trung
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Abstract

Smoothing filters are widely used in EEG signal processing for noise removal while preserving signals’ features. Inspired by our recent work on Upscale and Downscale Representation (UDR), this paper proposes a cascade arrangement of some effective image-processing techniques for signal filtering in the image domain. The UDR concept is to visualize EEG signals at an appropriate line width and convert it to a binary image. The smoothing process is then conducted by skeletonizing the signal object to a unit width and projecting it back to the time domain. Two successive UDRs could result in a better-smoothing performance, but their binary image conversion should be restricted. The process is computationally ineffective, especially at higher line width values. Cascaded Thinning UDR (CTUDR) is proposed, exploiting morphological operations to perform a two-stage upscale and downscale within one binary image representation. CTUDR is verified on a signal smoothing and classification task and compared with conventional techniques, such as the Moving Average, the Binomial, the Median, and the Savitzky Golay filters. Simulated EEG data with added white Gaussian noise is employed in the former, while cognitive conflict data obtained from a 3D object selection task is utilized in the latter. CTUDR outperforms its counterparts, scoring the best fitting error and correlation coefficient in signal smoothing while achieving the highest gain in Accuracy (0.7640%) and F-measure (0.7607%) when used as a smoothing filter for training data of EEGNet.
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用于脑电图信号处理的上标度和下标度表示中的级联稀化。
平滑滤波器在脑电信号处理中被广泛用于去除噪声,同时保留信号特征。受我们最近在 "上标尺和下标尺表示(UDR)"方面的工作启发,本文提出了一种级联安排,将一些有效的图像处理技术用于图像域的信号滤波。UDR 的概念是以适当的线宽将脑电图信号可视化,并将其转换为二值图像。然后通过将信号对象骨架化为单位宽度并投射回时域来进行平滑处理。两个连续的 UDR 可以带来更好的平滑性能,但其二进制图像转换应受到限制。这一过程的计算效率较低,尤其是在线宽值较高的情况下。本文提出了级联稀化 UDR(CTUDR),利用形态学运算在一个二进制图像表征中执行两阶段的放大和缩小。CTUDR 在信号平滑和分类任务中得到了验证,并与移动平均、二项式、中值和萨维茨基戈莱滤波器等传统技术进行了比较。前者使用的是添加了白高斯噪声的模拟脑电图数据,后者使用的是从三维物体选择任务中获得的认知冲突数据。CTUDR 的表现优于同类滤波器,在信号平滑方面获得了最佳拟合误差和相关系数,而在作为 EEGNet 训练数据的平滑滤波器时,其准确率(0.7640%)和 F 测量(0.7607%)收益最高。
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来源期刊
CiteScore
8.60
自引率
8.20%
发文量
479
审稿时长
6-12 weeks
期刊介绍: Rehabilitative and neural aspects of biomedical engineering, including functional electrical stimulation, acoustic dynamics, human performance measurement and analysis, nerve stimulation, electromyography, motor control and stimulation; and hardware and software applications for rehabilitation engineering and assistive devices.
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