论文标题
基于多目标CNN的SAR Despeckling算法
Multi-Objective CNN Based Algorithm for SAR Despeckling
论文作者
论文摘要
如今,遥感中的深度学习(DL)已成为一种有效的操作工具:它主要用于更改检测,图像恢复,细分,检测和分类等应用中。参考合成孔径雷达(SAR)结构域,由于对SAR图像的非微不足道解释,DL技术的应用并不简单,特别是由于斑点的存在而引起的。在过去的几年中,已经提出了一些针对SAR Despeckling的深度学习解决方案。这些解决方案中的大多数都集中在不同的网络体系结构的定义上,具有相似的成本函数,不涉及SAR图像属性。在本文中,提出了一个具有多目标成本函数的卷积神经网络(CNN),提出了SAR图像的空间和统计特性。这是通过通过三个不同术语的加权组合获得的特殊损耗函数的定义来实现的。该术语中的每个术语主要专用于以下SAR图像特征之一:空间细节,斑点统计特性和强散射器识别。它们的组合可以平衡这些效果。此外,提出了一个专门设计的体系结构,以在经过考虑的框架内有效提取独特的特征。从定量和定性的角度来看,对模拟和真实SAR图像的实验显示了所提出方法的准确性与最先进的伪造算法相比。考虑到成本函数中这种Sar属性的重要性对于正确的噪声排斥和细节保存在不同下划线的场景中,例如同质,异质和极为异质的情况至关重要。
Deep learning (DL) in remote sensing has nowadays become an effective operative tool: it is largely used in applications such as change detection, image restoration, segmentation, detection and classification. With reference to synthetic aperture radar (SAR) domain the application of DL techniques is not straightforward due to non trivial interpretation of SAR images, specially caused by the presence of speckle. Several deep learning solutions for SAR despeckling have been proposed in the last few years. Most of these solutions focus on the definition of different network architectures with similar cost functions not involving SAR image properties. In this paper, a convolutional neural network (CNN) with a multi-objective cost function taking care of spatial and statistical properties of the SAR image is proposed. This is achieved by the definition of a peculiar loss function obtained by the weighted combination of three different terms. Each of this term is dedicated mainly to one of the following SAR image characteristics: spatial details, speckle statistical properties and strong scatterers identification. Their combination allows to balance these effects. Moreover, a specifically designed architecture is proposed for effectively extract distinctive features within the considered framework. Experiments on simulated and real SAR images show the accuracy of the proposed method compared to the State-of-Art despeckling algorithms, both from quantitative and qualitative point of view. The importance of considering such SAR properties in the cost function is crucial for a correct noise rejection and details preservation in different underlined scenarios, such as homogeneous, heterogeneous and extremely heterogeneous.