使用支持向量机进行场景分类的基于特定密度的匹配核

Abhijeet Sachdev, Veena Thenkanidiyoor, A. D. Dileep, C. Sekhar
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引用次数: 0

摘要

在本文中,我们提出了基于特定样本密度的匹配核(ESDMK),用于将场景图像分类为局部特征向量集。通过匹配在这两个示例中每个局部特征向量上计算的特定于示例的密度的估计,在以局部特征向量集表示的一对示例之间计算所提出的核。在这项工作中,一个例子的局部特征向量在一个局部特征向量的K个最近邻中的数量被认为是对特定样本密度的估计。在一个局部特征向量上,两个样本特定密度(每个样本一个)的最小值被认为是匹配分数。然后将ESDMK计算为一对示例中每个局部特征向量的匹配分数之和。我们还提出了空间ESDMK (SESDMK),以在匹配场景图像对时包含场景图像中的空间信息。每个场景图像在空间上被划分为固定数量的区域。然后将SESDMK计算为与相应区域匹配的特定区域esdmk的组合。我们研究了基于支持向量机(SVM)的分类器使用所提出的esdmk进行场景分类的性能,并与基于支持向量机的分类器使用最先进的局部特征向量集的核进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Example-Specific Density Based Matching Kernels for Scene Classification Using Support Vector Machines
In this paper, we propose the example-specific density based matching kernel (ESDMK) for classification of scene images represented as sets of local feature vectors. The proposed kernel is computed between the pair of examples, represented as sets of local feature vectors, by matching the estimates of example-specific densities computed at every local feature vector in those two examples. In this work, the number of local feature vectors of an example among the K nearest neighbors of a local feature vector is considered as an estimate of the example-specific density. The minimum of the two example-specific densities, one for each example, at a local feature vector is considered as the matching score. The ESDMK is then computed as the sum of the matching score computed at every local feature vector in a pair of examples. We also propose the spatial ESDMK (SESDMK) to include spatial information present in the scene images while matching the pair of scene images. Each of the scene images is divided spatially into a fixed number of regions. Then the SESDMK is computed as a combination of region specific ESDMKs that match the corresponding regions. We study the performance of the support vector machine (SVM) based classifiers using the proposed ESDMKs for scene classification and compare with that of the SVM-based classifiers using the state-of-the-art kernels for sets of local feature vectors.
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