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Change detection in SAR images using deep belief network: a new training approach based on morphological images

机译:基于深度信念网络的SAR图像变化检测:一种基于形态学图像的训练新方法

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摘要

In solving change detection problem, unsupervised methods are usually preferred to their supervised counterparts due to the difficulty of producing labelled data. Nevertheless, in this paper, a supervised deep learning-based method is presented for change detection in synthetic aperture radar (SAR) images. A Deep Belief Network (DBN) was employed as the deep architecture in the proposed method, and the training process of this network included unsupervised feature learning followed by supervised network fine-tuning. From a general perspective, the trained DBN produces a change detection map as the output. Studies on DBNs demonstrate that they do not produce ideal output without a proper dataset for training. Therefore, the proposed method in this study provided a dataset with an appropriate data volume and diversity for training the DBN using the input images and those obtained from applying the morphological operators on them. The great computational volume and the time-consuming nature of simulation are the drawbacks of deep learning-based algorithms. To overcome such disadvantages, a method was introduced to greatly reduce computations without compromising the performance of the trained DBN. Experimental results indicated that the proposed method had an acceptable implementation time in addition to its desirable performance and high accuracy.
机译:在解决变更检测问题时,由于难以生成标记数据,因此通常采用无监督方法而不是有监督方法。尽管如此,在本文中,还是提出了一种基于监督的深度学习方法来检测合成孔径雷达(SAR)图像中的变化。提出的方法采用深度信念网络(Deep Belief Network,DBN)作为深度架构,该网络的训练过程包括无监督特征学习,然后进行有监督网络微调。从一般的角度来看,训练有素的DBN会生成更改检测图作为输出。对DBN的研究表明,如果没有适当的训练数据集,它们将无法产生理想的输出。因此,本研究中提出的方法提供了具有适当数据量和多样性的数据集,用于使用输入图像以及通过在其上应用形态学算符获得的图像来训练DBN。庞大的计算量和仿真的耗时性质是基于深度学习的算法的缺点。为了克服这些缺点,引入了一种在不影响训练后的DBN性能的情况下大大减少计算量的方法。实验结果表明,该方法除具有理想的性能和较高的准确性外,还具有可接受的实施时间。

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