Experimental results towards content-based sub-image retrieval

Tao Wang, Juhua Shi, M. Nascimento
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引用次数: 2

Abstract

We are interested in the problem of sub-image retrieval (CBSIR), i.e., given a query image one must find the best candidate images that contain that query image. We use two kinds of image feature vectors: global color histograms and autocorrelograms and experimented with several distance measures for both feature vectors in our experimental system. After extensive experimentation we found that using autocorrelograms with the so-called S/sub 1/ distance measure yielded excellent results for sub-image retrieval with an acceptable processing overhead.
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基于内容的子图像检索实验结果
我们对子图像检索(CBSIR)问题感兴趣,即给定查询图像,必须找到包含该查询图像的最佳候选图像。我们使用了两种图像特征向量:全局颜色直方图和自相关图,并在实验系统中对这两种特征向量进行了几种距离度量。经过广泛的实验,我们发现使用自相关图与所谓的S/sub 1/距离测量在子图像检索中产生了极好的结果,并且处理开销可接受。
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