Image retrieval: feature primitives, feature representation, and relevance feedback

Xiang Sean Zhou, Thomas S. Huang
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引用次数: 26

Abstract

In this paper feature selection and representation techniques in CBIR systems are reviewed and interpreted in a unified feature representation paradigm. We revise our previously proposed water-filling edge features with newly proposed primitives and present them using this unified feature formation paradigm. Experiments and comparisons are performed to illustrate the characteristics of the new features. Also proposed is sub-image feature extraction for regional matching. Relevance feedback as an on-line learning mechanism is adopted for feature and tile selection and weighting during the retrieval.
图像检索:特征原语、特征表示和相关反馈
本文对CBIR系统中的特征选择和特征表示技术进行了综述,并在统一的特征表示范式下进行了解释。我们用新提出的原语修正了之前提出的充水边缘特征,并使用这个统一的特征形成范式来呈现它们。实验和比较说明了新特征的特点。同时提出了子图像特征提取的区域匹配方法。在检索过程中,将相关反馈作为一种在线学习机制,用于特征和图像的选择和加权。
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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