Zhang Xuedong, Peng Cheng, Li Ziqi, Zhang Yaqi, Liu Yongxuan, Wang Yong
School of Geomatics and Urban Spatial Informatics, Beijing University of Civil Engineering and Architecture, Beijing 102616, China.
Beijing Key Laboratory of Urban Spatial Information Engineering, Beijing 100038, China.
Sensors (Basel). 2024 Dec 6;24(23):7821. doi: 10.3390/s24237821.
Interferometric Synthetic Aperture Radar (InSAR) is a widely used remote sensing technology for Earth observation, enabling the detection and measurement of ground deformation through the generation of interferograms. However, phase noise remains a critical factor that degrades interferogram quality. To address this issue, this study proposes MOMFNet, a deep learning approach for InSAR phase filtering based on multi-objective multi-kernel feature extraction that leverages multi-objective multi-kernel feature extraction. MOMFNet incorporates a multi-objective loss function that accounts for both the spatial and statistical characteristics of the denoising results, while its multi-kernel convolutional feature extraction module captures multi-scale information comprehensively. Furthermore, the introduction of weighted residual blocks allows the model to adaptively adjust the importance of features, improving its ability to accurately identify and suppress noise. To train the MOMFNet network, we developed an interferogram simulation strategy that uses randomly distorted 2D Gaussian surfaces to simulate terrain variations, Perlin noise to model atmospheric turbulence phases, and negative Gaussian noise to generate random training samples at different noise levels. Comparative experiments with traditional denoising methods and other deep learning approaches, through both qualitative and quantitative analyses, demonstrated that MOMFNet excels in noise suppression and phase recovery, particularly in scenarios involving large gradients and random noise. Empirical studies using Sentinel-1 satellite data from the Yanzhou coal mine validated the practical value of MOMFNet, showing that it effectively removes irrelevant noise while preserving critical phase details, significantly improving interferogram quality. This research provides important insights into the application of deep learning for InSAR denoising.
干涉合成孔径雷达(InSAR)是一种广泛用于地球观测的遥感技术,通过生成干涉图来检测和测量地面变形。然而,相位噪声仍然是降低干涉图质量的关键因素。为了解决这个问题,本研究提出了MOMFNet,一种基于多目标多核特征提取的InSAR相位滤波深度学习方法。MOMFNet包含一个多目标损失函数,该函数考虑了去噪结果的空间和统计特征,而其多核卷积特征提取模块全面捕捉多尺度信息。此外,加权残差块的引入使模型能够自适应调整特征的重要性,提高其准确识别和抑制噪声的能力。为了训练MOMFNet网络,我们开发了一种干涉图模拟策略,该策略使用随机扭曲的二维高斯曲面来模拟地形变化,使用柏林噪声来模拟大气湍流相位,并使用负高斯噪声在不同噪声水平下生成随机训练样本。通过定性和定量分析与传统去噪方法和其他深度学习方法进行的对比实验表明,MOMFNet在噪声抑制和相位恢复方面表现出色,特别是在涉及大梯度和随机噪声的场景中。使用兖州煤矿的哨兵 - 1卫星数据进行的实证研究验证了MOMFNet的实用价值,表明它在保留关键相位细节的同时有效地去除了无关噪声,显著提高了干涉图质量。这项研究为深度学习在InSAR去噪中的应用提供了重要见解。