基于区域匹配的户外图像自动分类

O. V. Kaick, Greg Mori
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引用次数: 14

摘要

提出了一种新的图像分类方法。它与以往的方法不同,是基于区域匹配计算图像相似度。首先,对待分类图像进行区域分割或规则块分割。接下来,从每个片段或块中提取低级特征,并根据两幅图像的相关特征计算两幅图像之间的相似度作为区域两两匹配的代价。实验结果表明,该方法提高了图像分类的质量。此外,给出了无监督聚类结果来验证该图像相似度量的有效性。
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Automatic Classification of Outdoor Images by Region Matching
This paper presents a novel method for image classification. It differs from previous approaches by computing image similarity based on region matching. Firstly, the images to be classified are segmented into regions or partitioned into regular blocks. Next, low-level features are extracted from each segment or block, and the similarity between two images is computed as the cost of a pairwise matching of regions according to their related features. Experiments are performed to verify that the proposed approach improves the quality of image classification. In addition, unsupervised clustering results are presented to verify the efficacy of this image similarity measure.
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