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Brain Visual State Classification of fMRI Data Using Fuzzy Support Vector Machine

机译:使用模糊支持向量机的FMRI数据进行脑视觉状态分类

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The fMRI (Functional Magnetic Resonance Imaging) technology is a revolutionary tool that has lit up the studies of human cognitive processing with the help of efficient methods of image and data analysis. Machine learning classifiers are widely employed to extract all sorts of information from neuroimaging data. This study aims to identify tangible patterns in the fMRI data for visual activity and perform multivariate pattern analysis. It is done by selecting relevant features to indicate the response to visual stimulus of a set of objects belonging to eight different categories. The task intends to identify the nature of the response to the stimuli and classify them according to the brain's neural activation to the visual stimuli. An SVM (Support Vector Machine) classifier and an FSVM (Fuzzy Support Vector Machine) classifier are implemented to perform the classification based on the features. The training of the classifiers involved 72 test samples per category. The 24 test samples of each category were tested with each of the classifiers. Conclusively, for this dataset, the FSVM classifier performs better than SVM classifier with an increased accuracy of 4% and classifying certain categories with improvement.
机译:FMRI(功能磁共振成像)技术是一种革命性的工具,借助于图像和数据分析的有效方法,借助于人类认知处理的研究。机器学习分类器被广泛用于从神经影像数据中提取各种信息。本研究旨在识别FMRI数据中的有形模式以进行视觉活动,并执行多变量模式分析。通过选择相关的功能来指示对属于八个不同类别的一组对象的视觉刺激的响应。该任务打算识别对刺激的响应的性质,并根据大脑的神经激活对视觉刺激进行分类。 SVM(支持向量机)分类器和FSVM(模糊支持向量机)分类器被实现为基于特征执行分类。分类器的培训涉及每类测试样本。每个类别的24个测试样品用每个分类器进行测试。最终,对于此数据集,FSVM分类器比SVM分类器更好地执行,精度为4%,并在具有改进的某些类别进行分类。

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