An Unsupervised Cluster-based Image Retrieval Algorithm using Relevance Feedback

Jayant Mishra, Anu Sharma, Kapil Chaturvedi
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引用次数: 18

Abstract

Content-based image retrieval (CBIR) systems utilize low level query image feature as identifying similarity between a query image and the image database. Image contents are plays significant role for image retrieval. There are three fundamental bases for content-based image retrieval, i.e. visual feature extraction, multidimensional indexing, and retrieval system design. Each image has three contents such as: color, texture and shape features. Color and texture both plays important image visual features used in Content-Based Image Retrieval to improve results. Color histogram and texture features have potential to retrieve similar images on the basis of their properties. As the feature extracted from a query is low level, it is extremely difficult for user to provide an appropriate example in based query. To overcome these problems and reach higher accuracy in CBIR system, providing user with relevance feedback is famous for provide promising solution.
一种基于关联反馈的无监督聚类图像检索算法
基于内容的图像检索(CBIR)系统利用低级查询图像特征来识别查询图像与图像数据库之间的相似性。图像内容对图像检索起着重要的作用。基于内容的图像检索有三个基本基础,即视觉特征提取、多维索引和检索系统设计。每张图像包含三个内容:颜色、纹理和形状特征。在基于内容的图像检索中,颜色和纹理都是提高检索结果的重要图像视觉特征。颜色直方图和纹理特征具有基于其属性检索相似图像的潜力。由于从查询中提取的特征是低级的,用户很难在基于查询中提供合适的示例。为了克服这些问题,提高CBIR系统的精度,向用户提供相关反馈是一个很有前途的解决方案。
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