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Spatial pyramid match kernels for brain image classification

机译:空间金字塔匹配核用于脑图像分类

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The most widely used classification techniques for whole brain image classification rely on kernel machines such as support vector machines and Gaussian processes, due to their computational efficiency, accurate prediction and suitability to tackle the combination of small sample sizes and high dimensionality that make neuroimaging data a challenging problem. Such methods generally make use of linear kernels, which assume an exact correspondence between the voxels in two brain images. This paper introduces spatial pyramid matching kernels from the computer vision literature to this problem, which allow us to relax this assumption to compensate for registration errors. The kernel formulation is compared against linear kernels for the model problems of gender prediction for classification and age prediction for regression, using a nested cross validation procedure to robustly select the optimal kernel parameters and assess the results. The spatial pyramid matching kernel outperforms the linear one in both tasks.
机译:用于全脑图像分类的最广泛使用的分类技术依赖于诸如支持向量机和高斯过程之类的核机器,因为它们的计算效率高,准确的预测能力和适用于处理小样本量和高维数的组合,从而使神经成像数据成为可能。具有挑战性的问题。这样的方法通常利用线性核,其假设两个大脑图像中的体素之间存在精确的对应关系。本文介绍了从计算机视觉文献到此问题的空间金字塔匹配核,这使我们可以放宽该假设以补偿配准误差。使用嵌套交叉验证程序可靠地选择最佳内核参数并评估结果,将内核公式与线性内核进行比较,以解决性别预测分类和年龄预测的模型问题。在这两个任务中,空间金字塔匹配核的性能均优于线性核。

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