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Pleasant/Unpleasant Filtering for Affective Image Retrieval Based on Cross-Correlation of EEG Features

机译:基于脑电特征互相关的情感图像检索的愉快/不愉快过滤

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People often make decisions based on sensitivity rather than rationality. In the field of biological information processing, methods are available for analyzing biological information directly based on electroencephalogram: EEG to determine the pleasant/unpleasant reactions of users. In this study, we propose a sensitivity filtering technique for discriminating preferences (pleasant/unpleasant) for images using a sensitivity image filtering system based on EEG. Using a set of images retrieved by similarity retrieval, we perform the sensitivity-based pleasant/unpleasant classification of images based on the affective features extracted from images with the maximum entropy method: MEM. In the present study, the affective features comprised cross-correlation features obtained from EEGs produced when an individual observed an image. However, it is difficult to measure the EEG when a subject visualizes an unknown image. Thus, we propose a solution where a linear regression method based on canonical correlation is used to estimate the cross-correlation features from image features. Experiments were conducted to evaluate the validity of sensitivity filtering compared with image similarity retrieval methods based on image features. We found that sensitivity filtering using color correlograms was suitable for the classification of preferred images, while sensitivity filtering using local binary patterns was suitable for the classification of unpleasant images. Moreover, sensitivity filtering using local binary patterns for unpleasant images had a 90% success rate. Thus, we conclude that the proposed method is efficient for filtering unpleasant images.
机译:人们通常基于敏感性而不是理性来做出决定。在生物信息处理领域,可以使用直接基于脑电图:EEG来分析生物信息的方法,以确定用户的愉悦/不愉快反应。在这项研究中,我们提出了一种敏感度过滤技术,该方法使用基于EEG的敏感度图像过滤系统来区分图像的偏好(令人愉快/不愉快)。使用通过相似性检索获得的一组图像,我们基于使用最大熵方法:MEM从图像中提取的情感特征,对图像进行了基于敏感度的令人愉快/不愉快的分类。在本研究中,情感特征包括从个体观察图像时产生的脑电图获得的互相关特征。然而,当对象可视化未知图像时,很难测量脑电图。因此,我们提出了一种解决方案,其中使用基于典范相关性的线性回归方法从图像特征中估计互相关特征。与基于图像特征的图像相似度检索方法相比,进行了实验以评估灵敏度过滤的有效性。我们发现使用彩色相关图的敏感度过滤适合于首选图像的分类,而使用局部二进制模式的敏感度过滤则适合于不适图像的分类。此外,对于不愉快的图像,使用局部二进制模式进行灵敏度过滤的成功率为90%。因此,我们得出结论,所提出的方法对于过滤不愉快的图像是有效的。

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