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DEEP LEARNING APPLIED TO WATER SEGMENTATION

Thales Akiyama, José Marcato, Wesley Nunes Gonçalves, Patrik Olã Bressan, Anette Eltner, Fernando Binder, Thomas P. Singer

2020˜The œinternational archives of the photogrammetry, remote sensing and spatial information sciences/International archives of the photogrammetry, remote sensing and spatial information sciences32 citationsDOIOpen Access PDF

Abstract

Abstract. The use of deep learning (DL) with convolutional neural networks (CNN) to monitor surface water can be a valuable supplement to costly and labour-intense standard gauging stations. This paper presents the application of a recent CNN semantic segmentation method (SegNet) to automatically segment river water in imagery acquired by RGB sensors. This approach can be used as a new supporting tool because there are only a few studies using DL techniques to monitor water resources. The study area is a medium-scale river (Wesenitz) located in the East of Germany. The captured images reflect different periods of the day over a period of approximately 50 days, allowing for the analysis of the river in different environmental conditions and situations. In the experiments, we evaluated the input image resolutions of 256 × 256 and 512 × 512 pixels to assess their influence on the performance of river segmentation. The performance of the CNN was measured with the pixel accuracy and IoU metrics revealing an accuracy of 98% and 97%, respectively, for both resolutions, indicating that our approach is efficient to segment water in RGB imagery.

Topics & Concepts

RGB color modelConvolutional neural networkSegmentationPixelComputer scienceArtificial intelligenceDeep learningScale (ratio)Image segmentationPattern recognition (psychology)Artificial neural networkRemote sensingComputer visionCartographyGeologyGeographyFlood Risk Assessment and ManagementRemote Sensing and LiDAR ApplicationsAdvanced Neural Network Applications
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