Image Retrieval Based on Dynamic Weighted Patterns

Rahima Boukerma, Bachir Boucheham, Salah Bougueroua
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Abstract

In this paper we present Dynamic Pattern Weighting (DPW), a novel method for Content-Based Image Retrieval (CBIR). This method has the capability to reduce the semantic gap by giving dynamically an appropriate weight to each pattern of the image according to the image class and the importance of the pattern in the image. After an offline optimization phase using a metaheuristic algorithm, a weight vector is obtained for each class of the image database. Thereafter, to choose the proper weight vector for the query image, an assumed class is determined by applying K-nearest neighbors algorithm. Furthermore, for each individual pattern a different importance is determined adaptively, depending on the occurrences number of the pattern in the image. The proposed method has been evaluated using four local pattern methods to extract image texture features. Experiments on Corel-1K database reveals that the performance of the dynamic weighted methods outperforms the other methods.
基于动态加权模式的图像检索
本文提出了一种基于内容的图像检索(CBIR)的新方法——动态模式加权(DPW)。该方法根据图像的类别和模式在图像中的重要程度,动态地赋予图像中每个模式适当的权重,从而减小了语义差距。采用元启发式算法进行离线优化后,得到图像数据库中每一类图像的权重向量。然后,应用k近邻算法确定假设类,为查询图像选择合适的权重向量。此外,对于每个单独的图案,根据图案在图像中的出现次数,自适应地确定不同的重要性。用四种局部模式方法对该方法进行了评价,以提取图像纹理特征。在Corel-1K数据库上的实验表明,动态加权方法的性能优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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