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Brain fMRI Image Classification and Statistical Representation of Visual Objects

机译:脑FMRI图像分类和视觉物体的统计表示

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The application of the given paper work is to estimate what image a human brain is visually perceiving based on the neuroimaging information observed from the ventral temporal cortex (VT) portion. In the process, we used the nilearn library from python repository along with the haxby dataset which includes a set of functional MRI from 6 subjects viewing images that contains a grid of black and white pictures of some certain objects. Firstly, the haxby dataset was collected and few pre-processing steps such as masking, scaling and smoothing was done in order to reduce the complexity, noise and to standardize the data. Furthermore, the entire dataset was splitted into 80% of training example and 20% of test example. After that, the training examples were passed through a set of machine learning frameworks which consist of `Nearest Neighbors', `Linear SVM', `RBF SVM', `Gaussian Process', `Decision Tree', `Random Forest', `Neural Net', `Ada-Boost', `Naive Bayes' and `QDA' algorithms. Completing the training, the accuracy of the frameworks were tested and on an average the most accuracy of 95% was found with Neural Network and Support Vector Machine (SVM) across all the subjects.
机译:给定的纸张工作的应用是估计人脑在视觉上认为基于从腹侧颞型皮质(VT)部分观察到的神经影像信息的内容。在这个过程中,我们使用从蟒库的库nilearn与haxby数据集包括来自6名受试者查看包含的一些特定对象的黑白照片的网格图像的一组功能性磁共振成像的沿。首先,收集了HAXBY数据集,并完成了很少的预处理步骤,例如屏蔽,缩放和平滑,以降低复杂性,噪声和标准化数据。此外,整个数据集分离为80%的训练例和20%的测试示例。在此之后,训练示例是通过一组机器学习框架,其由`近邻,`线性SVM“`RBF SVM”,`高斯过程,`决策树“`随机森林”,`神经传递网“'艾达 - 升压型”,'朴素贝叶斯和'QDA”算法。完成培训,框架的准确性进行了测试,平均地,在所有受试者中使用神经网络和支持向量机(SVM)的最精度为95%。

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