Texture classification for content-based image retrieval

R. Pirrone
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引用次数: 7

Abstract

An original approach to texture-based classification of regions, for image indexing and retrieval, is presented. The system addresses automatic macro-textured ROI detection, and classification: we focus our attention on those objects that can be characterized by a texture as a whole, like trees, flowers, walls, clouds, and so on. The proposed architecture is based on the computation of the /spl lambda/ vector from each selected region, and classification of this feature by means of a pool of suitably trained support vector machines (SVM). This approach is an extension of the one previously developed by some of the authors to classify image regions on the basis of the geometrical shape of the objects they contain. Theoretical remarks, motivation of the approach, experimental setup, and the first satisfactory results on natural scenes are reported.
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基于内容的图像检索的纹理分类
提出了一种基于纹理的区域分类方法,用于图像索引和检索。该系统解决了自动宏纹理ROI检测和分类:我们将注意力集中在那些可以通过纹理作为一个整体来表征的对象上,比如树、花、墙、云等等。所提出的架构是基于计算每个选定区域的/spl lambda/向量,并通过一组经过适当训练的支持向量机(SVM)对该特征进行分类。这种方法是先前一些作者根据图像区域包含的物体的几何形状对其进行分类的方法的扩展。本文报道了该方法的理论说明、动机、实验设置以及在自然场景下的初步满意结果。
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