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Natural image classification driven by human brain activity

机译:人脑活动驱动的自然图像分类

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摘要

Natural image classification has been a hot topic in computer vision and pattern recognition research field. Since the performance of an image classification system can be improved by feature selection, many image feature selection methods have been developed. However, the existing supervised feature selection methods are typically driven by the class label information that are identical for different samples from the same class, ignoring with-in class image variability and therefore degrading the feature selection performance. In this study, we propose a novel feature selection method, driven by human brain activity signals collected using fMRI technique when human subjects were viewing natural images of different categories. The fMRI signals associated with subjects viewing different images encode the human perception of natural images, and therefore may capture image variability within- and cross- categories. We then select image features with the guidance of fMRI signals from brain regions with active response to image viewing. Particularly, bag of words features based on GIST descriptor are extracted from natural images for classification, and a sparse regression base feature selection method is adapted to select image features that can best predict fMRI signals. Finally, a classification model is built on the select image features to classify images without fMRI signals. The validation experiments for classifying images from 4 categories of two subjects have demonstrated that our method could achieve much better classification performance than the classifiers built on image feature selected by traditional feature selection methods.
机译:自然图像分类已经成为计算机视觉和模式识别研究领域的热门话题。由于可以通过特征选择来改善图像分类系统的性能,因此已经开发了许多图像特征选择方法。但是,现有的受监督特征选择方法通常由类别标签信息驱动,该类别标签信息对于来自同一类别的不同样本是相同的,从而忽略了类别内图像的可变性,从而降低了特征选择性能。在这项研究中,我们提出了一种新颖的特征选择方法,该方法是在人类受试者观看不同类别的自然图像时,由使用fMRI技术收集的人类大脑活动信号驱动的。与对象观看不同图像相关的fMRI信号对人类对自然图像的感知进行编码,因此可以捕获类别内和类别间的图像变异性。然后,我们在来自大脑区域的fMRI信号的引导下选择图像特征,并对图像浏览做出积极反应。特别地,从自然图像中提取基于GIST描述符的词袋特征进行分类,并且稀疏回归基础特征选择方法适用于选择可以最好地预测fMRI信号的图像特征。最后,在选择的图像特征上建立分类模型,以对没有fMRI信号的图像进行分类。对来自两个主题的4个类别的图像进行分类的验证实验表明,与基于传统特征选择方法选择的基于图像特征的分类器相比,我们的方法可以实现更好的分类性能。

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