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A hierarchical boosting algorithm based on feature selection for Synthetic Aperture Radar image retrieval

机译:一种基于合成孔径雷达图像检索特征选择的分层促进算法

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A hierarchical boosting algorithm based on feature selection is proposed for Synthetic Aperture Radar (SAR) image retrieval here. Motivated by Joint Boost and Shared feature frameworks, category combinations are adopted as the training and classification set of a hierarchical boosting-based classification framework’s middle layer. It has superiorities over the classical method which combines Boosting algorithm with many features as inputs. Meanwhile, different from the Joint Boost scheme, our method separates feature selection from training and retrieval processes. Thus more flexible feature selecting schemes can be used, e.g. nonlinear separating plane can be obtained. Some typical features such as Gabor, Edge Orientation Histogram, gray-level co-occurrence matrix, Grey Histogram and Tamura are used as the candidates of the input and statistics-based selecting method is used as the feature selection scheme. The experiments are carried on the KTH_TIPS and SAR image datasets and the results reveal our algorithm’s efficient performances and superiorities.
机译:基于特征选择的分层促进算法用于在此提出了合成孔径雷达(SAR)图像检索的基础特征选择。通过联合升压和共享特征框架的动机,通过类别组合作为基于分层升级的分类框架中间层的培训和分类集。它具有优异的经典方法,该方法将升压算法与许多功能相结合。同时,与联合升压方案不同,我们的方法将特征选择与训练和检索过程分开。因此,可以使用更灵活的特征选择方案,例如,可以获得非线性分离平面。使用诸如Gabor,边缘方向直方图,灰度级共生矩阵,灰度直方图和Tamura的一些典型特征作为输入和基于统计的选择方法的候选用作特征选择方案。实验在Kth_TIPS和SAR图像数据集上进行,结果揭示了我们的算法的高效性能和优越性。

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