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Classification of polarimetric SAR images using compact convolutional neural networks

机译:光谱卷积神经网络的Polarimetric SAR图像分类

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摘要

Classification of polarimetric synthetic aperture radar (PolSAR) images is an active research area with a major role in environmental applications. The traditional Machine Learning (ML) methods proposed in this domain generally focus on utilizing highly discriminative features to improve the classification performance, but this task is complicated by the well-known "curse of dimensionality" phenomena. Other approaches based on deep Convolutional Neural Networks (CNNs) have certain limitations and drawbacks, such as high computational complexity, an unfeasibly large training set with ground-truth labels, and special hardware requirements. In this work, to address the limitations of traditional ML and deep CNN-based methods, a novel and systematic classification framework is proposed for the classification of PolSAR images, based on a compact and adaptive implementation of CNNs using a sliding-window classification approach. The proposed approach has three advantages. First, there is no requirement for an extensive feature extraction process. Second, it is computationally efficient due to utilized compact configurations. In particular, the proposed compact and adaptive CNN model is designed to achieve the maximum classification accuracy with minimum training and computational complexity. This is of considerable importance considering the high costs involved in labeling in PolSAR classification. Finally, the proposed approach can perform classification using smaller window sizes than deep CNNs. Experimental evaluations have been performed over the most commonly used four benchmark PolSAR images: AIRSAR L-Band and RADARSAT-2 C-Band data of San Francisco Bay and Flevoland areas. Accordingly, the best obtained overall accuracies range between 92.33-99.39% for these benchmark study sites.
机译:Polariemetric合成孔径雷达(POLSAR)图像的分类是一个活跃的研究区域,具有在环境应用中具有重要作用的主动研究区域。在该领域提出的传统机器学习(ML)方法通常专注于利用高度辨别特征来提高分类性能,但是这项任务因众所周知的“维度”现象而复杂化。基于深度卷积神经网络(CNNS)的其他方法具有一定的限制和缺点,例如高计算复杂性,具有地面真实标签和特殊硬件要求的无可行的大型训练。在这项工作中,为了解决传统的ML和基于CNN的深度基于CNN的方法的局限,提出了一种基于使用滑动窗口分类方法的CNN的紧凑和自适应实现来分类POLSAR图像的新颖和系统的分类框架。所提出的方法有三个优点。首先,不需要广泛的特征提取过程。其次,由于使用紧凑的配置,它是在计算上有效的。特别地,所提出的紧凑和自适应CNN模型旨在实现最大训练和计算复杂性的最大分类精度。考虑到在POLSAR分类中涉及的标签所涉及的高成本,这具有重要意义。最后,所提出的方法可以使用比深CNNS的较小窗口大小进行分类。在最常用的四个基准波斯马尔图像中进行了实验评估:San Francisco Bay和Flevoland地区的Airsar L-Band和Radarsat-2 C频段数据。因此,这些基准研究站点的最佳总体精度范围为92.33-99.39%。

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