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http://dx.doi.org/10.7848/ksgpc.2018.36.5.423

Surface Water Mapping of Remote Sensing Data Using Pre-Trained Fully Convolutional Network  

Song, Ah Ram (Dept. of Civil and Environmental Engineering, Seoul National University)
Jung, Min Young (Dept. of Civil and Environmental Engineering, Seoul National University)
Kim, Yong Il (Dept. of Civil and Environmental Engineering, Seoul National University)
Publication Information
Journal of the Korean Society of Surveying, Geodesy, Photogrammetry and Cartography / v.36, no.5, 2018 , pp. 423-432 More about this Journal
Abstract
Surface water mapping has been widely used in various remote sensing applications. Water indices have been commonly used to distinguish water bodies from land; however, determining the optimal threshold and discriminating water bodies from similar objects such as shadows and snow is difficult. Deep learning algorithms have greatly advanced image segmentation and classification. In particular, FCN (Fully Convolutional Network) is state-of-the-art in per-pixel image segmentation and are used in most benchmarks such as PASCAL VOC2012 and Microsoft COCO (Common Objects in Context). However, these data sets are designed for daily scenarios and a few studies have conducted on applications of FCN using large scale remotely sensed data set. This paper aims to fine-tune the pre-trained FCN network using the CRMS (Coastwide Reference Monitoring System) data set for surface water mapping. The CRMS provides color infrared aerial photos and ground truth maps for the monitoring and restoration of wetlands in Louisiana, USA. To effectively learn the characteristics of surface water, we used pre-trained the DeepWaterMap network, which classifies water, land, snow, ice, clouds, and shadows using Landsat satellite images. Furthermore, the DeepWaterMap network was fine-tuned for the CRMS data set using two classes: water and land. The fine-tuned network finally classifies surface water without any additional learning process. The experimental results show that the proposed method enables high-quality surface mapping from CRMS data set and show the suitability of pre-trained FCN networks using remote sensing data for surface water mapping.
Keywords
Surface Water Mapping; Deep Learning; Fully Convolutional Networks; DeepWaterMap; Coastwide Reference Monitoring System;
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1 Audebert, N., Lesaux, B., and Lefevre, S. (2016), Semantic segmentation of earth observation data using multimodal and multi-scale deep networks, In : Asian Conference on Computer Vision, Computer Vision-ACCV 2016, Springer, Cham, Taipei, Taiwan, pp. 180-196.
2 Fu, G., Liu, C., Zhou, R., Sun, T., and Zhang, Q. (2017), Classification for high resolution remote sensing imagery using a fully convolutional network, Remote Sensing, Vol. 9, No. 5, pp. 498.   DOI
3 Isikdogan, F., Bovik, A.C., and Passalacqua, P. (2017), Surface water mapping by deep learning, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, Vol. 10, No. 11, pp. 4909-4918.   DOI
4 Jiao, L., Liang, M., Chen, H., Yang, S., Liu, H., and Cao, X. (2017), Deep fully convolutional network-based spatial distribution prediction for hyperspectral image classification, IEEE Transactions on Geoscience and Remote Sensing, Vol. 55, No. 10, pp. 5585-5599.   DOI
5 Karpatne, A., Khandelwal, A., Chen, X., Mithal, V., Faghmous, J., and Kumar, V. (2016), Global monitoring of inland water dynamics: state-of-the-art, challenges, and opportunities, 4th International Conference on Computational Sustainability, Springer, Cham, 6-8 July, Newyork, USA, pp. 121-147.
6 Long, J., Shelhamer, E., and Darrell, T. (2015), Fully convolutional networks for semantic segmentation, The IEEE Conference on Computer Vision and Pattern Recognition, 7-12 June, Boston, USA, pp. 3431-3440.
7 Mcfeeters, S.K. (1996), The use of the Normalized Difference Water Index (NDWI) in the delineation of open water features, International Journal of Remote Sensing, Vol. 17, No. 7, pp.1425-1432.   DOI
8 Sarp, G. and Ozcelik, M. (2017), Water body extraction and change detection using time series: A case study of Lake Burdur, Turkey, Journal of Taibah University for Science, Vol. 11, No. 3, pp. 381-391.   DOI
9 Steyer, G.D. (2010), Coastwide Reference Monitoring System(CRMS). US Geological Survey Fact Sheet 2010-3018, USGS National Wetlands Research Center, Lafayette, LA, pp. 2.
10 Wang, L., Xiong, Y., Wang, Z., and Qiao, Y. (2015), Towards good practices for very deep two-stream ConvNets. Cornell University Library, Ithaca, New York, https://arxiv.org/abs/1507.02159 (last date accessed 17 October 2018).