Affiliation:
1. College of Science, National University of Defense Technology, Changsha 410073, China
2. School of Artificial Intelligence, Sun Yat-sen University (Zhuhai Campus), Zhuhai 519082, China
Abstract
Tomographic Synthetic Aperture Radar (TomoSAR) building object height inversion is a sparse reconstruction problem that utilizes the data obtained from several spacecraft passes to invert the scatterer position in the height direction. In practical applications, the number of passes is often small, and the observation data are also small due to the objective conditions, so this study focuses on the inversion under the restricted observation data conditions. The Analytic Learned Iterative Shrinkage Thresholding Algorithm (ALISTA) is a kind of deep unfolding network algorithm, which is a combination of the Iterative Shrinkage Thresholding Algorithm (ISTA) and deep learning technology, and it has the advantages of both. The ALISTA is one of the representative algorithms for TomoSAR building object height inversion. However, the structure of the ALISTA algorithm is simple, which has neither the excellent connection structure of a deep learning network nor the acceleration format combined with the ISTA algorithm. Therefore, this study proposes two directions of improvement for the ALISTA algorithm: firstly, an improvement in the inter-layer connection of the network by introducing a connection similar to residual networks obtains the Extragradient Analytic Learned Iterative Shrinkage Thresholding Algorithm (EALISTA) and further proves that the EALISTA achieves linear convergence; secondly, there is an improvement in the iterative format of the intra-layer iteration of the network by introducing the Nesterov momentum acceleration, which obtains the Fast Analytic Learned Iterative Shrinkage Thresholding Algorithm (FALISTA). We first performed inversion experiments on simulated data, which verified the effectiveness of the two proposed algorithms. Then, we conducted TomoSAR building object height inversion experiments on limited measured data and used the deviation metric P to measure the robustness of the algorithms to invert under restricted observation data. The results show that both proposed algorithms have better robustness, which verifies the superior performance of the two algorithms. In addition, we further analyze how to choose the most suitable algorithms for inversion in engineering practice applications based on the results of the experiments on measured data.
Funder
National Key R&D Program of China
Reference27 articles.
1. Zhu, X.X., Wang, Y., and Montazeri, S. (2018). A review of ten-year advances of multi-baseline SAR interferometry using TerraSAR-X data. Remote Sens., 10.
2. Very high resolution spaceborne SAR tomography in urban environment;Zhu;IEEE Trans. Geosci. Remote Sens.,2010
3. Multisignal compressed sensing for polarimetric SAR tomography;Aguilera;IEEE Geosci. Remote Sens. Lett.,2012
4. Budillon, A., Johnsy, A.C., and Schirinzi, G. (August, January 28). Sar tomography based on deep learning. Proceedings of the International Geoscience and Remote Sensing Symposium 2019, Yokohama, Japan.
5. Rong, S., Shunjun, W., Yanbo, W., Jun, S., and Xiaoling, Z. (2023, January 16–21). A 3-D Imaging Method of Building with Tomosar Based on DUADMM-Net. Proceedings of the 2023 IEEE International Geoscience and Remote Sensing Symposium, Pasadena, CA, USA.