基于Contourlet和Haralick纹理特征的多尺度多向遥感图像检索

Rajakumar Krishnan, A. Thangavelu, P. Prabhavathy, D. Sudheer, D. Putrevu, A. Misra
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引用次数: 1

摘要

目的根据图像的内容提取合适的特征来表示图像是一项非常繁琐的任务。特别是在遥感中,我们有地球表面各种物体的高分辨率图像。马氏距离度量用于度量查询图像和数据库图像之间的相似度。低距离获得的图像在顶部被索引为与查询高度相关的信息。设计/方法/方法本文旨在开发一个遥感图像数据的自动特征提取系统。将基于Contourlet变换的Haralick纹理特征与从四叉树(QT)分解中提取的统计特征融合为特征集来表示输入数据。提取的特征将通过基于web的用户界面使用基于图像的查询从大型图像数据集中检索相似的图像。结果采用查准率、查全率和F1分数对所开发的检索系统进行了性能分析。与其他现有的基于多尺度的特征提取方法相比,所提出的特征向量在前50个相关检索结果中具有更好的性能,精度为0.69。本文的主要贡献是通过结合Contourlet域的Haralick纹理属性和使用QT分解的统计特征,开发了多尺度域的纹理特征向量。表示图像所需的特征是207,与其他纹理方法相比,这是非常少的维度。这种表演比其他最先进的方法表现得更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Web-based remote sensing image retrieval using multiscale and multidirectional analysis based on Contourlet and Haralick texture features
PurposeExtracting suitable features to represent an image based on its content is a very tedious task. Especially in remote sensing we have high-resolution images with a variety of objects on the Earth's surface. Mahalanobis distance metric is used to measure the similarity between query and database images. The low distance obtained image is indexed at the top as high relevant information to the query.Design/methodology/approachThis paper aims to develop an automatic feature extraction system for remote sensing image data. Haralick texture features based on Contourlet transform are fused with statistical features extracted from the QuadTree (QT) decomposition are developed as feature set to represent the input data. The extracted features will retrieve similar images from the large image datasets using an image-based query through the web-based user interface.FindingsThe developed retrieval system performance has been analyzed using precision and recall and F1 score. The proposed feature vector gives better performance with 0.69 precision for the top 50 relevant retrieved results over other existing multiscale-based feature extraction methods.Originality/valueThe main contribution of this paper is developing a texture feature vector in a multiscale domain by combining the Haralick texture properties in the Contourlet domain and Statistical features using QT decomposition. The features required to represent the image is 207 which is very less dimension compare to other texture methods. The performance shows superior than the other state of art methods.
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