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Optimal feature selection for SAR image classification using biogeography-based optimization (BBO), artificial bee colony (ABC) and support vector machine (SVM): a combined approach of optimization and machine learning

机译:基于生物地理的优化(BBO),人造蜜蜂(ABC)和支持向量机(SVM)的SAR图像分类的最佳特征选择:优化和机器学习的组合方法

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Land cover classification is one of the most important applications of POLSAR images. In this paper, a hybrid biogeography-based optimization support vector machine (HBBOSVM) has been introduced to classify POLSAR images of RADARSAT 2 in band C acquired from San Francisco, USA. The main purpose of this classification is to minimize the number of features and maximize classification accuracy. The proposed method consists of three main steps: preprocessing, feature selection and classification. As preprocessing, radiometric calibration, speckle reduction and feature extraction have been performed. In the proposed HBBO, the combination of onlooker bee of artificial bee colony (ABC) and migration operator of biogeography-based optimization has been applied in order to optimal feature selection. Then, SVM has been used to classify the pixels into specific labels of land-covers. The ground truth samples have been generated by google earth image, Pauli RGB image, high resolution image and national land cover database (NLCD 2006). The performance of HBBOSVM has been compared with BBOSVM, ABCSVM, particle swarm optimization support vector machine (PSOSVM) and the results of previous studies. In addition, the performance of HBBO is evaluated upon 20 well-known benchmark problems. According to the obtained results, the overall accuracy and average accuracy of HBBOSVM are 96.01% and 93.37% respectively which is the best result in comparison with other results. The HBBOSVM has better performance than other algorithms in terms of overall accuracy, kappa coefficient, average accuracy, convergence trend, and stability. In addition, the HBBO can be considered as a successful meta-heuristic for benchmark problems. This paper displays that the combined approach of optimization and machine learning methods provides powerful results.
机译:Land Cover分类是Polsar图像中最重要的应用之一。本文已经引入了一种混合生物地理学的优化支持向量机(HBBOSVM)以对来自美国旧金山获得的频段C的雷达拉特2的Polsar图像进行分类。该分类的主要目的是最大限度地减少特征的数量并最大限度地提高分类准确性。该方法的三个主要步骤组成:预处理,特征选择和分类。作为预处理,已经进行了辐射校准,散斑减少和特征提取。在拟议的HBBO中,已经应用了人造群菌落(ABC)和基于生物地基优化的迁移运算符的甲板蜂的组合,以便最佳特征选择。然后,SVM已被用于将像素分类为陆地覆盖的特定标签。谷歌地球图像,Pauli RGB图像,高分辨率图像和国家陆地覆盖数据库(NLCD 2006)生成了地面真理样本。将HBBOSVM的性能与BBOSVM,ABCSVM,粒子群优化支持向量机(PSOSVM)进行比较,以及先前研究的结果。此外,在20个众所周知的基准问题上评估HBBO的性能。根据所得的结果,HBBOSVM的总体准确性和平均精度分别为96.01%和93.37%,与其他结果相比,最佳结果。 HBBOSVM在整体准确性,KAPPA系数,平均精度,收敛趋势和稳定性方面具有比其他算法更好的性能。此外,HBBO可以被视为基准问题的成功元主义。本文显示了优化和机器学习方法的综合方法提供了强大的结果。

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