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Change Detection in Synthetic Aperture Radar Images Based on Deep Neural Networks

机译:基于深度神经网络的合成孔径雷达图像变化检测

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摘要

This paper presents a novel change detection approach for synthetic aperture radar images based on deep learning. The approach accomplishes the detection of the changed and unchanged areas by designing a deep neural network. The main guideline is to produce a change detection map directly from two images with the trained deep neural network. The method can omit the process of generating a difference image (DI) that shows difference degrees between multitemporal synthetic aperture radar images. Thus, it can avoid the effect of the DI on the change detection results. The learning algorithm for deep architectures includes unsupervised feature learning and supervised fine-tuning to complete classification. The unsupervised feature learning aims at learning the representation of the relationships between the two images. In addition, the supervised fine-tuning aims at learning the concepts of the changed and unchanged pixels. Experiments on real data sets and theoretical analysis indicate the advantages, feasibility, and potential of the proposed method. Moreover, based on the results achieved by various traditional algorithms, respectively, deep learning can further improve the detection performance.
机译:本文提出了一种基于深度学习的合成孔径雷达图像变化检测方法。该方法通过设计深度神经网络来完成对变化和未变化区域的检测。主要指南是使用经过训练的深度神经网络直接从两个图像生成变化检测图。该方法可以省略生成差分图像(DI)的过程,该差分图像显示多时间合成孔径雷达图像之间的差异程度。因此,可以避免DI对变化检测结果的影响。深度架构的学习算法包括无监督的特征学习和有监督的微调以完成分类。无监督特征学习旨在学习两个图像之间关系的表示。另外,有监督的微调的目的在于学习像素变化和不变的概念。在真实数据集上进行的实验和理论分析表明了该方法的优势,可行性和潜力。此外,基于分别通过各种传统算法获得的结果,深度学习可以进一步提高检测性能。

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