基于自主迁移学习的手指动作分类

F. S. Hanggara, Khairul Anam, D. Setiawan, Bambang Sujanarko
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引用次数: 0

摘要

数据移位导致的误分类是基于脑机接口的分类系统的难点之一。如果分类系统不考虑训练数据集和测试数据集之间的分布变化,就可能发生这种情况。在脑电分类领域中,由于间歇试验的存在,鉴定系统的性能会显著下降。本文介绍了基于脑电运动图像的自主迁移学习(ATL)在手指运动分类中的应用。在同一次试验中,四名受试者的平均准确率为0.504,但在间歇试验中,它略差(0.475)。由于其简单性,所建议的方法也具有最快的处理速度,并提供了在迭代训练不可行的边缘设备上使用的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finger Movements Classification using Autonomous Transfer Learning
Misclassification resulting from data shifts is one of the difficulties in classification systems based on brain-computer interfaces. This may occur if the classification system does not consider distributional shifts between training and test sets of data. The performance of the qualification system in the EEG classification domain may significantly deteriorate because of inter-session trials. This article introduces autonomous transfer learning (ATL) in the pipeline for classifying finger movement based on EEG motor imagery. On same-session trials, the average accuracy of four subjects is 0.504, but on inter-session trials, it is slightly worse (0.475). Due to its simplicity, the suggested method also has the fastest processing speed and offers the opportunity to be used on edge devices where iterative training is not feasible.
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