首页> 外文期刊>Journal of integrative neuroscience. >Semantic category-based decoding of human brain activity using a Gabor-based model by estimating intracranial field potential range in temporal cortex
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Semantic category-based decoding of human brain activity using a Gabor-based model by estimating intracranial field potential range in temporal cortex

机译:基于语义类别的基于语义的人脑活动解码,使用基于GABOR的模型通过估计时间皮层中的颅内域电位范围

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Predicting and decoding the recorded neural activity for visual stimuli is the topic of many studies. This prediction can be made by comparing the model's responses to different stimuli with the available recorded brain signal. The neural activities can be decoded then by finding the stimulus which has generated the nearest model's response to the recorded signal. In this study, a model is proposed which can estimate the response of human brain to images from different conceptual categories by inserting the visual stimuli as the model input after filtering by Gabor wavelets. This helped us to find each image's low level visual features. Afterward, the extracted image features were applied to the input of a curve fitting neural network. As the output, the range of intracranial field potential was estimated. This was performed separately for each pixel of the image. To evaluate the model's accuracy, two factors were used, namely the Pearson correlation and Normalized root mean square error. The results show that the proposed model can accurately estimate the brain's response to conceptual categories To decode the brain' activity based on the observed semantic category in each test observations by using of the model, we calculated the distance between the recorded signal and the model responses to all stimuli from different categories and assigned the category of the nearest model response to brain's response in that trial. To this end, a K-nearest neighbors classifier based on Euclidean distance was used. This leaded to a classification accuracy which was significantly higher than chance level. So, the proposed model can be used to decode the activity of the brain in response to the visual stimuli.
机译:预测和解码可视刺激的记录的神经活动是许多研究的主题。通过将模型对不同刺激的响应与可用的拍摄的脑信号进行比较来进行该预测。通过找到产生最近模型对记录信号的响应的刺激,可以解码神经活动。在本研究中,提出了一种模型,其可以通过将视觉刺激插入到通过Gabor小波滤波后的模型输入来估计人类大脑对不同概念类别的图像的响应。这有助于我们找到每个图像的低级视觉功能。之后,提取的图像特征被应用于曲线拟合神经网络的输入。作为输出,估计颅内域电位范围。这是针对图像的每个像素分开进行。为了评估模型的准确性,使用了两个因素,即Pearson相关性和标准化的根均方误差。结果表明,该模型可以准确估计大脑对概念类别的响应,通过使用该模型在每个测试观测中基于观察到的语义类别解码大脑活动,我们计算了记录信号与模型响应之间的距离从不同类别的所有刺激并分配了最近的模型响应大脑在该试验中的反应。为此,使用基于欧几里德距离的K-最近邻居分类器。这引出了分类准确性,其明显高于偶然水平。因此,所提出的模型可用于响应视觉刺激来解码大脑的活动。

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