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WAY-LOOK4: A CBIR System Based on Class Signature of the Images' Color and Texture Features

机译:Way-Look4:基于类别签名的CBIR系统的颜色和纹理特征

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This paper presents WhatAreYouLOOKing4 (WAY-LOOK4) system, a novel framework for content-based image retrieval (CBIR). Local descriptors are used to describe the visual contents of an image. Image signatures and similarity retrieval are based on the images' color and texture features. The main motivation of the system design is to use simple and efficient techniques to maintain reasonable computational and storage cost. The proposed technique has three system components: feature extraction, image database indexing and similarity retrieval. First, the use of circular sectors is proposed to represent local first order moment for the color feature. In addition, a local direction technique is used for texture feature extraction. Secondly, the hash indexing of the images' color properties is used to map the database images into classes. Hash indexing speeds up the search and enhances the system scalability for large image databases. Thirdly, for similarity retrieval, a degree of similarity is defined based on a weighted sum of the color and texture features. In addition, the similarity retrieval incorporates a minimum accepted degree of similarity provided by the user. The test of similarity is performed in two stages. In the first stage, the index is used to directly hit a class to which the query image may belong. In the second stage, a detailed sequential search is performed to retrieve the most similar images within that class. The simple design of the system and experimental selection of system parameters guarantee that the system maintains reasonable storage and computational cost. Our experiments demonstrate that the average precision of retrieved images is enhanced especially for higher accepted degrees of similarity.
机译:本文介绍了Whatareyououlooking4(Way-Look4)系统,这是基于内容的图像检索(CBIR)的新框架。本地描述符用于描述图像的视觉内容。图像签名和相似性检索基于图像的颜色和纹理功能。系统设计的主要动机是利用简单有效的技术来保持合理的计算和储存成本。所提出的技术有三个系统组件:特征提取,图像数据库索引和相似性检索。首先,提出了使用圆形部门来表示颜色特征的本地第一阶矩。另外,局部方向技术用于纹理特征提取。其次,使用图像'颜色属性的哈希索引来将数据库图像映射到类中。哈希索引速度加快搜索并增强了大图像数据库的系统可扩展性。第三,对于相似性检索,基于颜色和纹理特征的加权之和定义一定程度的相似性。此外,相似性检索包括用户提供的最小可接受的相似度。相似性的测试是在两个阶段进行的。在第一阶段,索引用于直接击中查询图像可以属于的类。在第二阶段,执行详细的顺序搜索以检索该类内的最相似的图像。系统参数的简单设计和系统参数的实验选择保证了系统保持合理的存储和计算成本。我们的实验表明,由于更高的接受度相似度,增强了检索图像的平均精度。

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