一种基于内容的高效图像检索方法

P. Nikkam, B. E. Reddy
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引用次数: 3

摘要

基于图像的内容识别和检索在许多应用中至关重要。现有的基于内容的图像检索机制在性能方面缺乏。本文介绍了一种基于层次模板树的CBIR系统。图像中的内容使用形状特征和低级特征的组合来表示。所提出的全面的特征集定义能够实现更好的性能。形状和低级别特征被视为模板。对相似类别的模板进行进一步分解,形成层次模板树。将查询图像转换为查询模板并进行分解。使用基于零件模板的匹配方案和SVM分类器来检索视觉相似的图像。论文中的结果证明,与最近现有的机制相比,所提出的技术具有优越的性能。使用该方法,平均精度和平均检索准确率分别提高了10.45%和9.69%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AN EFFICIENT APPROACH FOR CONTENT BASED IMAGE RETRIEVAL USING HIERARCHICAL PART-TEMPLATE AND TREE MODELING
Image based content recognition and retrieval is critical in many applications. Existing mechanisms for content based image retrieval lack in terms of performance. In this paper a hierarchical template tree based CBIR system is described. Content in image is represented using a combination of shape features and low level features. Comprehensive feature set definitions proposed enables in achieving better performance. Shape and low level features are considered as templates. Templates of similar categories are further decomposed to form a hierarchical template tree. Query image is converted into a query template and is decomposed. A part template based matching scheme and SVM classifier is used to retrieve visually similar images. Results presented in the paper prove superior performance of proposed technique when compared to recent existing mechanisms in place. An improvement of 10.45% and 9.69% in mean average precision and mean retrieval accuracy is reported using proposed approach.
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