Machine learning applications in detecting sand boils from images
Author(s) -
Aditi Kuchi,
Md Tamjidul Hoque,
Mahdi Abdelguerfi,
Maik C. Flanagin
Publication year - 2019
Publication title -
array
Language(s) - English
Resource type - Journals
ISSN - 2590-0056
DOI - 10.1016/j.array.2019.100012
Subject(s) - levee , artificial intelligence , computer science , focus (optics) , rubble , digging , drone , deep learning , object detection , machine learning , geology , pattern recognition (psychology) , geotechnical engineering , archaeology , history , physics , genetics , biology , optics
Levees provide protection for vast amounts of commercial and residential properties. However, these structures require constant maintenance and monitoring, due to the threat of severe weather, sand boils, subsidence of land, seepage, etc. In this research, we focus on detecting sand boils. Sand boils occur when water under pressure wells up to the surface through a bed of sand. These make levees especially vulnerable. Object detection is a good approach to confirm the presence of sand boils from satellite or drone imagery, which can be utilized to assist in the automated levee monitoring methodology. Since sand boils have distinct features, applying object detection algorithms to it can result in accurate detection. To the best of our knowledge, this research work is the first approach to detect sand boils from images. In this research, we compare some of the latest deep learning methods, Viola-Jones algorithm, and other non-deep learning methods to determine the best performing one. We also train a Stacking-based machine learning method for the accurate prediction of sand boils. The accuracy of our robust model is 95.4%.
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