二元分类器框架的集体网络偏振SAR图像分类:一种进化方法。

Serkan Kiranyaz, Turker Ince, Stefan Uhlmann, Moncef Gabbouj
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引用次数: 20

摘要

极化合成孔径雷达(SAR)图像上的地形分类一直是一个活跃的研究领域,目前已经提出了许多特征和分类器。然而,一些关键问题,例如,1)如何选择某些特征,以实现对某些类别的最高歧视?如何以最有效的方式将它们结合起来?, 3)应用哪个距离度量?4)如何为手头的分类问题找到最优的分类器配置?5)如果存在大量的类/特征,如何扩展/调整分类器?最后,6)如何有效地训练分类器,使分类准确率最大化?,仍未得到答复。在本文中,我们提出了一个(进化)二元分类器(CNBC)框架的集体网络来解决所有这些问题,并实现高分类性能。CNBC框架采用“分而治之”的方法,通过分配几个NBC来区分每个类别,并在每个NBC中进行进化搜索以找到最优的BC。在这样的(增量)进化会话中,CNBC主体可以进一步动态地适应每个新传入的类/特征集,而无需全面的再训练或重新配置。在两个基准SAR图像上对所提出的框架进行了视觉和数值性能评估,证明了它的优越性和与该领域几个主要分类器的显著性能差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collective Network of Binary Classifier Framework for Polarimetric SAR Image Classification: An Evolutionary Approach.

Terrain classification over polarimetric synthetic aperture radar (SAR) images has been an active research field where several features and classifiers have been proposed up to date. However, some key questions, e.g., 1) how to select certain features so as to achieve highest discrimination over certain classes?, 2) how to combine them in the most effective way?, 3) which distance metric to apply?, 4) how to find the optimal classifier configuration for the classification problem in hand?, 5) how to scale/adapt the classifier if large number of classes/features are present?, and finally, 6) how to train the classifier efficiently to maximize the classification accuracy?, still remain unanswered. In this paper, we propose a collective network of (evolutionary) binary classifier (CNBC) framework to address all these problems and to achieve high classification performance. The CNBC framework adapts a "Divide and Conquer" type approach by allocating several NBCs to discriminate each class and performs evolutionary search to find the optimal BC in each NBC. In such an (incremental) evolution session, the CNBC body can further dynamically adapt itself with each new incoming class/feature set without a full-scale retraining or reconfiguration. Both visual and numerical performance evaluations of the proposed framework over two benchmark SAR images demonstrate its superiority and a significant performance gap against several major classifiers in this field.

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