基于模板的图像检索

J. Hsieh, W. Grimson
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引用次数: 0

摘要

本文提出了一种基于模板及其关系提取和估计的算法,用于对语义更敏感的图片库图像进行索引。在这种方法中,每个图像都由一组模板表示,它们的空间关系是捕捉图像本质的关键。每个模板都有一组优势区域,这些优势区域反映了目标在不同条件下的不同外观,通过区域匹配得到TEA (template extraction and analysis)算法。然后提出了空间模板关系提取与测量(STREAM)算法,用于获取这些提取模板之间的空间关系。由于模板可以在不同条件下表示对象的各种外观,因此与传统的基于区域的方法相比,该方法可以提供更好的功能和灵活性来捕获图像内容。此外,通过保持图像的空间布局,可以提取隐藏在查询图像中的语义,从而显著提高图像检索的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Template-based image retrieval
The paper presents a TREE (templates and their relationship extraction and estimation) algorithm for indexing images from picture libraries with more semantics-sensitive meanings. In this approach, each image is represented by a set of templates and their spatial relationships as keys to capture the essence of the image. Each template is characterized by a set of dominant regions, which reflect different appearances of an object at different conditions and can be obtained by the proposed TEA (template extraction and analysis) algorithm through region matching. The STREAM (spatial template relationship extraction and measurement) algorithm is then proposed for obtaining the spatial relations between these extracted templates. Due to the nature of a template, which can represent various appearances of an object at different conditions, the proposed approach can provide better capabilities and flexibilities to capture image contents than other traditional region-based methods. Besides, through maintaining the spatial layout of images, the semantic meanings hidden in the query images can be extracted and lead to significant improvements in the accuracy of image retrieval.
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