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Two-Phase Object-Based Deep Learning for Multi-Temporal SAR Image Change Detection

机译:基于两阶段对象的多时间SAR图像改变检测的深度学习

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摘要

Change detection is one of the fundamental applications of synthetic aperture radar (SAR) images. However, speckle noise presented in SAR images has a negative effect on change detection, leading to frequent false alarms in the mapping products. In this research, a novel two-phase object-based deep learning approach is proposed for multi-temporal SAR image change detection. Compared with traditional methods, the proposed approach brings two main innovations. One is to classify all pixels into three categories rather than two categories: unchanged pixels, changed pixels caused by strong speckle (false changes), and changed pixels formed by real terrain variation (real changes). The other is to group neighbouring pixels into superpixel objects such as to exploit local spatial context. Two phases are designed in the methodology: (1) Generate objects based on the simple linear iterative clustering (SLIC) algorithm, and discriminate these objects into changed and unchanged classes using fuzzy c-means (FCM) clustering and a deep PCANet. The prediction of this Phase is the set of changed and unchanged superpixels. (2) Deep learning on the pixel sets over the changed superpixels only, obtained in the first phase, to discriminate real changes from false changes. SLIC is employed again to achieve new superpixels in the second phase. Low rank and sparse decomposition are applied to these new superpixels to suppress speckle noise significantly. A further clustering step is applied to these new superpixels via FCM. A new PCANet is then trained to classify two kinds of changed superpixels to achieve the final change maps. Numerical experiments demonstrate that, compared with benchmark methods, the proposed approach can distinguish real changes from false changes effectively with significantly reduced false alarm rates, and achieve up to 99.71% change detection accuracy using multi-temporal SAR imagery.
机译:变更检测是合成孔径雷达(SAR)图像的基本应用之一。然而,SAR图像中呈现的散斑噪声对变化检测具有负面影响,导致映射产品中的频繁误报。在该研究中,提出了一种用于多时间SAR图像改变检测的新型对象基于深度学习方法。与传统方法相比,建议的方法带来了两个主要创新。一个是将所有像素分为三个类别而不是两类:不变的像素,改变由强斑点引起的像素(假更改),并改变由真实地形变化形成的改变像素(实际改变)。另一个是将邻居像素分组成超顶链对象,例如用于利用局部空间上下文。在方法中设计了两个阶段:(1)基于简单的线性迭代群集(SLIC)算法生成对象,并使用模糊C-Means(FCM)聚类和深层PCANet将这些对象区分成更改和不变的类别。该阶段的预测是变化和不变的超像素的集合。 (2)在像素上的深度学习,仅在第一阶段获得更改的超像素,以区分从错误变化的实际变化。再次使用斜角以在第二阶段实现新的超像素。将低等级和稀疏分解应用于这些新的超像素,以显着抑制散斑噪声。通过FCM将进​​一步的聚类步骤应用于这些新的超像素。然后培训新的PCANet以分类两种更改的SuperPixels以实现最终的变化图。数值实验表明,与基准方法相比,所提出的方法可以通过显着降低的误报率显着降低了虚假变化的实际变化,并使用多时间SAR图像实现高达99.71%的变化检测精度。

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