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Use of texture features for image classification and retrieval

机译:使用纹理特征进行图像分类和检索

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摘要

In this paper, we present an approach to texture-based image retrieval using image similarity on the basis of the matching of selected texture features. Image texture features are generated via Gray Level Co-occurence Matrix, Run-Length Matrix, and Image Histogram. Since they are computed over gray levels, color images of the database are first converted to 256 gray levels. For each image of the database, a set of texture features is extracted. They are derived from a modified form of the Gray Level Co-occurence Matrix over several angles and distances, from a modified form of the Run-Length Matrix over several angles, and from the Image Histogram. A sequential forward search is performed on all these features to reduce the dimensionality of the feature space. A supervised classifier is then applied to this reduced feature space in order to classify images into well separated classes. For measuring the similarity between two images (one - from the training set, another -from the experimental set) a distance between two texture feature vectors is calculated. First experiments with multiple queries in a large image database give good results in terms of both speed and classification rate.
机译:在本文中,我们在基于所选择的纹理特征的匹配的基础上,使用图像相似度提出了一种基于纹理的图像检索的方法。通过灰度共同发生矩阵,运行长度矩阵和图像直方图生成图像纹理特征。由于它们通过灰度级计算,因此数据库的彩色图像首先将其转换为256灰度。对于数据库的每个图像,提取了一组纹理功能。它们从若干角度和距离的灰度和距离的修改形式的灰度共同发生矩阵从多个角度的修改形式衍生,并且来自图像直方图。对所有这些特征执行顺序前进搜索以减少特征空间的维度。然后将监督分类器应用于该缩小的特征空间,以便将图像对分类为分离的类。为了测量两个图像之间的相似性(从训练集,另一个 - 从实验组中的另一个图像之间)计算两个纹理特征向量之间的距离。在大图像数据库中具有多个查询的第一个实验在速度和分类率方面提供了良好的结果。

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