An efficient content-based image retrieval with ant colony optimization feature selection schema based on wavelet and color features

A. Rashno, S. Sadri, Hossein SadeghianNejad
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引用次数: 30

Abstract

A novel content-based image retrieval (CBIR) schema with wavelet and color features followed by ant colony optimization (ACO) feature selection has been proposed in this paper. A new feature extraction schema including texture features from wavelet transformation and color features in RGB and HSV domain is proposed as representative feature vector for images in database. Also, appropriate similarity measure for each feature is presented. Retrieving results are so sensitive to image features used in content-based image retrieval. We address this problem with selection of most relevant features among complete feature set by ant colony optimization based feature selection. To evaluate the performance of our proposed CBIR schema, it has been compared with older proposed systems, results show that the precision and recall of our proposed schema are higher than older ones for the majority of image categories.
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一种基于小波和颜色特征的蚁群优化图像检索方法
提出了一种基于小波和颜色特征的基于内容的图像检索(CBIR)模式,并结合蚁群优化(ACO)特征选择。提出了一种基于小波变换的纹理特征和RGB和HSV域的颜色特征作为数据库中图像的代表性特征向量的特征提取方法。同时,对每个特征给出了适当的相似度度量。在基于内容的图像检索中,检索结果对图像特征非常敏感。我们通过基于蚁群优化的特征选择,在完整的特征集中选择最相关的特征来解决这一问题。为了评价本文提出的CBIR模式的性能,将其与已有的系统进行了比较,结果表明,对于大多数图像类别,本文提出的模式的准确率和召回率都高于已有的系统。
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