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Decoding human brain activity with deep learning

机译:通过深度学习对人的大脑活动进行解码

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Building a brain-computer fusion system that would integrate biological intelligence and machine intelligence became a research topic of great concern. Recent research has proved that human brain activity can be decoded from neurological data. Meanwhile, deep learning has become an effective way to solve practical problems.Taking advantage of these trends, in this paper, we propose a novel method of decoding brain activity evoked by visual stimuli. To achieve this goal, we first introduce a combined long short-term memory-convolutional neural network (LSTM-CNN) architecture to extract the compact category-dependent representations of electroencephalograms (EEG). Our approach combines the ability of LSTM to extract sequential features and the capability of CNN to distil local features. Next, we employ an improved spectral normalization generative adversarial network (SNGAN) to conditionally generate images using the learned EEG features. We evaluate our approach in terms of the classification accuracy of EEG and the quality of the generated images.The results show that the proposed LSTM-CNN algorithm that discriminates the object classes by using EEG can be more accurate than the existing methods. In qualitative and quantitative tests, the improved SNGAN performs better in the task of generating conditional images from the learned EEG representations; the produced images are realistic and highly resemble the original images.Our method can reconstruct the content of visual stimuli according to the brain's response. Therefore, it helps to decode the human brain activity by using an image-EEG-image transformation. (C) 2019 Elsevier Ltd. All rights reserved.
机译:建立一个将生物智能和机器智能相集成的脑计算机融合系统,已成为人们非常关注的研究课题。最近的研究证明,可以从神经学数据中解码人脑活动。同时,深度学习已成为解决实际问题的有效途径。利用这些趋势,本文提出了一种解码视觉刺激引起的大脑活动的新方法。为了实现这一目标,我们首先引入了一种组合的长期短期记忆-卷积神经网络(LSTM-CNN)架构,以提取脑电图(EEG)的紧凑类别相关表示。我们的方法结合了LSTM提取连续特征的能力和CNN提取局部特征的能力。接下来,我们采用改进的频谱归一化生成对抗网络(SNGAN),以使用学习到的EEG特征有条件地生成图像。我们从脑电图的分类精度和生成图像的质量方面对我们的方法进行了评估,结果表明,所提出的使用脑电图来区分对象类别的LSTM-CNN算法比现有方法更准确。在定性和定量测试中,改进的SNGAN在从学习到的EEG表示生成条件图像的任务中表现更好;所产生的图像逼真且与原始图像高度相似。我们的方法可以根据大脑的反应来重建视觉刺激的内容。因此,它有助于通过使用图像脑电图图像变换来解码人脑活动。 (C)2019 Elsevier Ltd.保留所有权利。

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