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Image Feature Extraction and Similarity Evaluation Using Kernels for Higher-Order Local Autocorrelation

机译:基于核的高阶局部自相关的图像特征提取和相似度评估

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The Higher-Order Moment (HOM) kernel is known to enable efficient utilization of higher-order autocorrelation (HOA) features in signals and images. Several authors report that kernel-based classification methods employing this kernel can classify image textures utilizing the HOA features efficiently. This work evaluates the nature of the HOM kernel of various orders as measures for image similarity. Through sensitivity evaluation and texture classification experiments, it was found that the Local Higher Order Moment (LHOM) kernel enables to control the selectivity of the similarity evaluation by using the Gaussian window.
机译:已知高阶矩(HOM)内核能够有效利用信号和图像中的高阶自相关(HOA)功能。几位作者报告说,采用该内核的基于内核的分类方法可以有效利用HOA功能对图像纹理进行分类。这项工作评估了不同阶数的HOM内核的性质,以此作为图像相似性的度量。通过敏感性评估和纹理分类实验,发现局部高阶矩(LHOM)内核能够通过使用高斯窗口来控制相似性评估的选择性。

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