基于曲率变换卷积神经网络的SAR图像变化检测

Akula Jaswanth, N. Gupta, A. Mishra, Y. Hum
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引用次数: 1

摘要

变化探测是遥感研究地表变化的一项重要任务。目前在SAR图像中对其进行了广泛的研究。然而,SAR图像受到斑点噪声的影响,这是一个主要的缺点。为了解决散斑噪声问题,我们提出了基于曲波变换的卷积神经网络。由于曲波变换可以抑制噪声,因此将其应用于预分类中,对差分图像进行曲波变换。然后,对变换后的图像进行分层模糊c均值(FCM)聚类,将每个像素点分为变化类和不变类。从预分类中,生成以属于这些类的像素为中心的patch作为训练样本。此外,这些训练样本在发送到卷积神经网络(CNN)之前经过中值滤波。中值滤波器有助于降低噪声。CNN模型经过训练后,训练后的模型对图像像素进行分类,并提供最终的二值变化图。两个SAR数据集的实验结果验证了该方法的有效性。
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Change Detection of SAR images based on Convolution Neural Network with Curvelet Transform
Change detection is an essential task to study the changes of earth surfaces in remote sensing. It is extensively being investigated in SAR images nowadays. However, SAR images suffer from the speckle noise, which is a major drawback. To address the speckle noise problem, we propose the convolutional neural network with curvelet transform. As curvelet transform can suppress the noise, it is applied in preclassification, where the difference image is transformed using curvelet. Further, transformed image is classified by hierarchical fuzzy c-means (FCM) clustering, where each pixel is classified into different classes like changed class and unchanged class. From the preclassification, patches centered at the pixels belonging to these classes are generated as the training samples. Moreover, these training samples are passed through median filter before sending them to the convolutional neural network (CNN). The median filter helps in the reduction of noise. After the training of the CNN model, the trained model classifies the image pixels and provides the final binary change map. The experimental results obtained from the two SAR datasets confirm the effectiveness of the proposed method.
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