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Rank Aggregation for Pattern Classifier Selection in Remote Sensing Images

机译:遥感影像中模式分类器选择的秩聚合

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摘要

In the past few years, segmentation and classification techniques have become a cornerstone of many successful remote sensing algorithms aiming at delineating geographic target objects. One common strategy relies on using multiple complex features to guide the delineation process with the objective of gathering complementary information for improving classification results. However, a persistent problem in this approach is how to combine different and noncorrelated feature descriptors automatically. In this regard, one solution is to combine them through multiple classifier systems (MCSs) in which the diversity of simpleoncomplex classifiers is an essential issue in the definition of appropriate strategies for classifier fusion. In this paper, we propose a novel strategy for selecting classifiers (whereby a classifier is taken as a pair of learning method plus image descriptor) to be combined in MCS. In the proposed solution, diversity measures are used to assess the degree of agreement/disagreement between pairs of classifiers and ranked lists are created to sort them according to their diversity score. Thereafter, the classifiers are also sorted according to their performance through different evaluation measures (e.g., kappa and tau indices). In the end, a rank aggregation method is proposed to select the most suitable classifiers based on both the diversity and the effectiveness performance of classifiers. The proposed fusion framework has targeted at coffee crop classification and urban recognition but it is general enough to be used in a variety of other pattern recognition problems. Experimental results demonstrate that the novel strategy yields good results when compared to several baselines while using fewer classifiers and being much more efficient.
机译:在过去的几年中,分割和分类技术已经成为许多成功的遥感算法的基础,这些算法旨在描绘地理目标对象。一种常见的策略依赖于使用多个复杂的功能来指导描绘过程,目的是收集补充信息以改善分类结果。然而,这种方法的一个持久性问题是如何自动组合不同且不相关的特征描述符。在这方面,一种解决方案是通过多个分类器系统(MCS)组合它们,其中简单/非复杂分类器的多样性是定义分类器融合的适当策略中的重要问题。在本文中,我们提出了一种用于选择要在MCS中组合的分类器的新策略(其中,将分类器作为一对学习方法加上图像描述符)。在提出的解决方案中,多样性度量用于评估分类器对之间的一致/不一致程度,并创建排名列表以根据其多样性得分对它们进行排序。此后,还通过不同的评估指标(例如,kappa和tau指数)根据分类器的效果对分类器进行分类。最后,提出了一种基于分类器的多样性和有效性的等级聚合方法来选择最合适的分类器。拟议的融合框架针对咖啡作物的分类和城市识别,但是它足够通用,可以用于各种其他模式识别问题。实验结果表明,与几种基准相比,该新颖策略可产生良好的效果,同时使用较少的分类器,并且效率更高。

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