基于脑电图的图像特征提取与深度学习视觉分类

Alankrit Mishra, N. Raj, Garima Bajwa
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引用次数: 0

摘要

虽然能够分离视觉数据,但人类需要时间来检查单个片段,更不用说数千或数百万个样本了。深度学习模型在现代计算的帮助下有效地处理大量信息。然而,它们有问题的决策过程引起了相当大的关注。近年来的研究提出了一种从脑电信号中提取图像特征并将其与标准图像特征相结合的新方法。这些方法使深度学习模型更具可解释性,并且可以在较少样本的情况下更快地收敛模型。受最近研究的启发,我们开发了一种有效的方法,将脑电图信号编码为图像,以促进深度学习模型对大脑信号的更微妙的理解。采用两种不同的编码方法,在6个受试者的分层数据集上对39个图像类别对应的编码脑电信号进行了分类,基准准确率达到70%,明显高于已有的工作。与纯深度学习方法相比,我们结合EEG特征的图像分类方法的准确率达到82%;然而,它证明了该理论的可行性。
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EEG-based Image Feature Extraction for Visual Classification using Deep Learning
While capable of segregating visual data, humans take time to examine a single piece, let alone thousands or millions of samples. The deep learning models efficiently process sizeable information with the help of modern-day computing. However, their questionable decision-making process has raised considerable concerns. Recent studies have identified a new approach to extract image features from EEG signals and combine them with standard image features. These approaches make deep learning models more interpretable and also enables faster converging of models with fewer samples. Inspired by recent studies, we developed an efficient way of encoding EEG signals as images to facilitate a more subtle understanding of brain signals with deep learning models. Using two variations in such encoding methods, we classified the encoded EEG signals corresponding to 39 image classes with a benchmark accuracy of 70% on the layered dataset of six subjects, which is significantly higher than the existing work. Our image classification approach with combined EEG features achieved an accuracy of 82% compared to the slightly better accuracy of a pure deep learning approach; nevertheless, it demonstrates the viability of the theory.
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