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Image classification using color, texture and regions

机译:使用颜色,纹理和区域进行图像分类

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摘要

A new classification method using color, texture and regions is proposed in this study. Image-based features related to color and local edge patterns are used to prune irrelevant database images for each query image. The proposed region matching is then applied to find the match to the query image from among the set of candidate images in the database. The dissimilarity of each pair of images can be calculated on the basis of the matching results. Finally, all the database images in the candidate set can be sorted by ascending dissimilarity values. To achieve the classification goal, the k-NN rule is used to assign a class label to the query image. Note that the main contribution of this paper is to select proper features for representing color, texture and region, which, in turn, are used to achieve effective classification results. More important, all features used in the proposed method, no matter color or texture, are presented in the simple form of histogram, yet leading to effective results. Even in the stage of region matching, color and texture features in histograms are also used to obtain homogeneous regions and to measure dissimilarity. In addition, the proposed classification method can be applied to all kinds of color image databases rather than specific databases. The number of classes can be as versatile as required by the application. The effectiveness and practicability of the proposed method has been demonstrated by various experiments.
机译:提出了一种使用颜色,纹理和区域的新分类方法。与颜色和局部边缘图案有关的基于图像的功能用于修剪每个查询图像的不相关的数据库图像。然后,将提出的区域匹配应用于从数据库中的一组候选图像中找到与查询图像的匹配。可以基于匹配结果来计算每对图像的相异性。最后,可以通过递增不相似值对候选集中的所有数据库图像进行排序。为了实现分类目标,使用k-NN规则为查询图像分配类别标签。请注意,本文的主要贡献在于选择了合适的特征来表示颜色,纹理和区域,这些特征又被用来实现有效的分类结果。更重要的是,所提出的方法中使用的所有功能,无论颜色或纹理,均以直方图的简单形式呈现,但仍可带来有效的结果。即使在区域匹配阶段,直方图中的颜色和纹理特征也可用于获得均匀区域并测量不相似性。另外,所提出的分类方法可以应用于各种彩色图像数据库而不是特定的数据库。类的数量可以根据应用程序的需要而变化。通过各种实验证明了该方法的有效性和实用性。

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