Application of Deep Learning for Segmenting Seepages in Levee Systems

Author:

Panta Manisha12,Thapa Padam Jung12,Hoque Md Tamjidul12ORCID,Niles Kendall N.3,Sloan Steve3ORCID,Flanagin Maik4,Pathak Ken3,Abdelguerfi Mahdi12

Affiliation:

1. Canizaro Livingston Gulf States Center for Environmental Informatics, The University of New Orleans, New Orleans, LA 70148, USA

2. Department of Computer Science, The University of New Orleans, New Orleans, LA 70148, USA

3. US Army Corps of Engineers, Engineer Research and Development Center, Vicksburg, MS 39180, USA

4. US Army Corps of Engineers, New Orleans, LA 70118, USA

Abstract

Seepage is a typical hydraulic factor that can initiate the breaching process in a levee system. If not identified and treated on time, seepages can be a severe problem for levees, weakening the levee structure and eventually leading to collapse. Therefore, it is essential always to be vigilant with regular monitoring procedures to identify seepages throughout these levee systems and perform adequate repairs to limit potential threats from unforeseen levee failures. This paper introduces a fully convolutional neural network to identify and segment seepage from the image in levee systems. To the best of our knowledge, this is the first work in this domain. Applying deep learning techniques for semantic segmentation tasks in real-world scenarios has its own challenges, especially the difficulty for models to effectively learn from complex backgrounds while focusing on simpler objects of interest. This challenge is particularly evident in the task of detecting seepages in levee systems, where the fault is relatively simple compared to the complex and varied background. We addressed this problem by introducing negative images and a controlled transfer learning approach for semantic segmentation for accurate seepage segmentation in levee systems.

Funder

U.S. Department of the Army–U.S. Army Corps of Engineers

Publisher

MDPI AG

Reference50 articles.

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3. Federal Emergency Management Agency (FEMA) (2020). HIstory of Levees.

4. Leffel, S. (2015). Evaluation and Monitoring of Seepage and Internal Erosion.

5. Schaefer, J.A., O’Leary, T.M., and Robbins, B.A. (2017, January 4). Assessing the implications of sand boils for backward erosion piping risk. Proceedings of the Geo-Risk 2017, Denver, CO, USA.

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