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Image Classification Using Marginalized Kernels for Graphs

机译:使用边缘化图形进行图像分类

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摘要

We propose in this article an image classification technique based on kernel methods and graphs. Our work explores the possibility of applying marginalized kernels to image processing. In machine learning, performant algorithms have been developed for data organized as real valued arrays; these algorithms are used for various purposes like classification or regression. However, they are inappropriate for direct use on complex data sets. Our work consists of two distinct parts. In the first one we model the images by graphs to be able to represent their structural properties and inherent attributes. In the second one, we use kernel functions to project the graphs in a mathematical space that allows the use of performant classification algorithms. Experiments are performed on medical images acquired with various modalities and concerning different parts of the body.
机译:我们在本文中提出了一种基于核方法和图形的图像分类技术。我们的工作探索了将边缘化内核应用于图像处理的可能性。在机器学习中,已经针对将数据组织为实值数组开发了性能算法;这些算法用于各种目的,例如分类或回归。但是,它们不适合直接用于复杂数据集。我们的工作包括两个不同的部分。在第一个图中,我们通过图形对图像进行建模,以便能够表示其结构特性和固有属性。在第二篇文章中,我们使用内核函数在允许使用性能分类算法的数学空间中投影图形。对以各种方式获取的涉及人体不同部位的医学图像进行了实验。

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