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High-resolution Multi-spectral Image Guided DEM Super-resolution using Sinkhorn Regularized Adversarial Network (2311.16490v2)

Published 27 Nov 2023 in eess.IV, cs.CV, and cs.LG

Abstract: Digital Elevation Model (DEM) is an essential aspect in the remote sensing domain to analyze and explore different applications related to surface elevation information. In this study, we intend to address the generation of high-resolution DEMs using high-resolution multi-spectral (MX) satellite imagery by incorporating adversarial learning. To promptly regulate this process, we utilize the notion of polarized self-attention of discriminator spatial maps as well as introduce a Densely connected Multi-Residual Block (DMRB) module to assist in efficient gradient flow. Further, we present an objective function related to optimizing Sinkhorn distance with traditional GAN to improve the stability of adversarial learning. In this regard, we provide both theoretical and empirical substantiation of better performance in terms of vanishing gradient issues and numerical convergence. We demonstrate both qualitative and quantitative outcomes with available state-of-the-art methods. Based on our experiments on DEM datasets of Shuttle Radar Topographic Mission (SRTM) and Cartosat-1, we show that the proposed model performs preferably against other learning-based state-of-the-art methods. We also generate and visualize several high-resolution DEMs covering terrains with diverse signatures to show the performance of our model.

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References (46)
  1. Aster global digital elevation model (gdem) and aster global water body dataset (astwbd). Remote Sensing, 12(7), 2020.
  2. Wasserstein generative adversarial networks. In Proceedings of the 34th International Conference on Machine Learning, pages 214–223. PMLR, 2017a.
  3. Wasserstein gan, 2017b.
  4. Stochastic optimization for large-scale optimal transport, 2016a.
  5. Stochastic optimization for large-scale optimal transport, 2016b.
  6. Convolutional neural network based dem super resolution. ISPRS - International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, XLI-B3:247–250, 2016.
  7. Marco Cuturi. Sinkhorn distances: Lightspeed computation of optimal transportation distances. Advances in Neural Information Processing Systems, 26, 2013.
  8. D-SRGAN: DEM super-resolution with generative adversarial networks. CoRR, abs/2004.04788, 2020.
  9. Dem super-resolution with efficientnetv2, 2021.
  10. Image super-resolution using deep convolutional networks. IEEE Transactions on Pattern Analysis and Machine Intelligence, 38, 2014.
  11. Generative multi-adversarial networks. CoRR, abs/1611.01673, 2016.
  12. SPA-GAN: spatial attention GAN for image-to-image translation. CoRR, abs/1908.06616, 2019.
  13. Shuttle radar topography mission produces a wealth of data. Eos Trans. AGU, 81:583-583, 2000.
  14. Causes and consequences of error in digital elevation models. progress in physical geography. Progress in Physical Geography, 30, 2006.
  15. Stochastic optimization for large-scale optimal transport. ArXiv, abs/1605.08527, 2016.
  16. Learning generative models with sinkhorn divergences. In Proceedings of the Twenty-First International Conference on Artificial Intelligence and Statistics, pages 1608–1617. PMLR, 2018.
  17. Sample complexity of sinkhorn divergences, 2019.
  18. Generative adversarial nets. In Advances in Neural Information Processing Systems. Curran Associates, Inc., 2014.
  19. A kernel method for the two-sample problem. CoRR, abs/0805.2368, 2008.
  20. Improved training of wasserstein gans. CoRR, abs/1704.00028, 2017.
  21. Single image super-resolution using gaussian process regression. In CVPR 2011, pages 449–456, 2011.
  22. Deep residual learning for image recognition. CoRR, abs/1512.03385, 2015.
  23. Towards fast and accurate real-world depth super-resolution: Benchmark dataset and baseline. 2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), pages 9225–9234, 2021.
  24. On the existence of optimal transport gradient for learning generative models, 2021.
  25. Densely connected convolutional networks. CoRR, abs/1608.06993, 2016.
  26. Deformable kernel networks for joint image filtering. International Journal of Computer Vision, 129, 2021.
  27. Overcoming data scarcity in flood hazard assessment using remote sensing and artificial neural network. Smart Water, 4:1–15, 2019.
  28. Photo-realistic single image super-resolution using a generative adversarial network. In 2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR), pages 105–114, 2017.
  29. Effect of dem sources on hydrologic applications. Computers, Environment and Urban Systems, 34:251–261, 2010.
  30. Enhanced deep residual networks for single image super-resolution. CoRR, abs/1707.02921, 2017.
  31. Polarized self-attention: Towards high-quality pixel-wise regression. CoRR, abs/2107.00782, 2021.
  32. Xiaoye Liu. Airborne lidar for dem generation: Some critical issues. progress in physical geography. Progress in Physical Geography - PROG PHYS GEOG, 32:31–49, 2008.
  33. Guided depth super-resolution by deep anisotropic diffusion. 2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), 2023.
  34. Extracting urban features from lidar digital surface models. Computers, Environment and Urban Systems, 24:65–78, 2000.
  35. Generalizing the nonlocal-means to super-resolution reconstruction. IEEE Transactions on Image Processing, 18(1):36–51, 2009.
  36. Unsupervised representation learning with deep convolutional generative adversarial networks. CoRR, abs/1511.06434, 2015.
  37. Litu Rout. Understanding the role of adversarial regularization in supervised learning. CoRR, abs/2010.00522, 2020.
  38. S2a: Wasserstein gan with spatio-spectral laplacian attention for multi-spectral band synthesis, 2020.
  39. Effects of dem resolution on the calculation of topographical indices: Twi and its components. Journal of Hydrology, 347:79–89, 2007.
  40. Kernel regression for image processing and reconstruction. IEEE Transactions on Image Processing, 16(2):349–366, 2007.
  41. Surface texture analysis of a high-resolution dtm: Interpreting an alpine basin. Geomorphology, s 161–162:26–39, 2012.
  42. U.S. Geological Survey (USGS). 1/3rd arc-second digital elevation models (dems)- usgs national map 3dep downloadable data collection. 2019.
  43. A fully progressive approach to single-image super-resolution. CoRR, abs/1804.02900, 2018.
  44. Sharp asymptotic and finite-sample rates of convergence of empirical measures in wasserstein distance, 2017.
  45. Nonlocal similarity based dem super resolution. ISPRS Journal of Photogrammetry and Remote Sensing, 110:48–54, 2015.
  46. Deep gradient prior network for dem super-resolution: Transfer learning from image to dem. ISPRS Journal of Photogrammetry and Remote Sensing, 150:80–90, 2019.

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