Tanaka Taichi, Nambu Isao, Wada Yasuhiro
Department of Science Technology of Innovation, Nagaoka University of Technology, Nagaoka 940-2188, Japan.
Department of Electrical, Electronics and Information Engineering, Nagaoka University of Technology, Nagaoka 940-2188, Japan.
Sensors (Basel). 2025 Jul 1;25(13):4119. doi: 10.3390/s25134119.
Electromyography (EMG) signals have diverse applications, ranging from prosthetic hands and assistive suits to rehabilitation devices. Nonetheless, their performance suffers from cross-subject generalization issues, electrode shifts, and daily variability. In a previous study, while transfer learning narrowed the classification performance gap to -1% in an eight-class scenario under electrode shift, they imposed the burden of additional data collection and re-training. To address this issue in real-time prediction, we investigated a sliding-window normalization (SWN) technique that merges z-score normalization with sliding-window processing to align the EMG amplitude across channels and mitigate the performance degradation caused by electrode displacement. We validated SWN using experimental data from a right-arm trajectory-tracking task involving three motion classes (rest, flexion, and extension of the elbow). Offline analysis revealed that SWN mitigated accuracy degradation to -1.0% without additional data for re-training or multi-condition training, a 6.6% improvement compared with the -7.6% baseline without normalization. The advantage of SWN is that it operates with data from a single electrode position for training, which eliminates both the collection of multi-position training data and the calibration of deep learning models before practical use in EMG applications. Moreover, combining SWN with multi-position training exceeded the classification accuracy of the no-shift condition by 2.4%.
肌电图(EMG)信号有多种应用,从假肢手、辅助套装到康复设备。尽管如此,其性能受到跨受试者泛化问题、电极移位和日常变异性的影响。在先前的一项研究中,虽然迁移学习在电极移位的八类场景中将分类性能差距缩小到了-1%,但它们带来了额外数据收集和重新训练的负担。为了解决实时预测中的这个问题,我们研究了一种滑动窗口归一化(SWN)技术,该技术将z分数归一化与滑动窗口处理相结合,以对齐各通道的肌电图幅度,并减轻电极位移导致的性能下降。我们使用来自涉及三种运动类别(肘部休息、弯曲和伸展)的右臂轨迹跟踪任务的实验数据对SWN进行了验证。离线分析表明,SWN在无需额外重新训练数据或多条件训练的情况下将准确率下降减轻到了-1.0%,与未归一化的-7.6%基线相比提高了6.6%。SWN的优势在于它使用来自单个电极位置的数据进行训练,这消除了多位置训练数据的收集以及在肌电图应用实际使用前深度学习模型的校准。此外,将SWN与多位置训练相结合,分类准确率比无移位条件高出2.4%。