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Feature Selection and Re-weighting in Content-based SAR Image Retrieval

机译:基于内容的SAR图像检索中的特征选择和重新加权

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With the development of synthetic aperture radar (SAR) in recent years,the explosion of SAR images has urged people to find efficient means for searching and organizing mass amounts of images.In this paper,we propose an approach to content-based retrieval of SAR images,which contains feature selection and relevance feedback.In the process of retrieval,a low-dimensional feature subset is selected from original feature set by feature selection technique based on linear support vector machines (SVM).And the relevance feedback technique employs feature re-weighting method to set appropriate weights for each component of the selected feature subset.Lastly,this feature subset with different weights is used to retrieve relevant images in database which are similar to sample images submitted by users.The experiment results prove that the proposed method is efficient for querying pure terrain in SAR image.
机译:随着近年来合成孔径雷达(SAR)的发展,SAR图像的爆炸式增长促使人们寻找有效的手段来搜索和组织大量图像。本文提出了一种基于内容的SAR检索方法在图像检索中,包含特征选择和相关反馈。在检索过程中,基于线性支持向量机(SVM)的特征选择技术从原始特征集中选择了低维特征子集。加权方法,为所选特征子集的每个分量设置合适的权重。最后,该具有不同权重的特征子集用于检索数据库中与用户提交的样本图像相似的相关图像。查询SAR图像中的纯地形非常有效。

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