Publication | Open Access
Extraction of Aquaculture Ponds along Coastal Region Using U2-Net Deep Learning Model from Remote Sensing Images
55
Citations
63
References
2022
Year
Remote Sensing ImagesConvolutional Neural NetworkEngineeringUnderwater ImagingImage ClassificationImage AnalysisPattern RecognitionAquacultureImage-based ModelingCoastal AquacultureAquaculture PondsCoastal Aquaculture PondsMachine VisionImage Classification (Visual Culture Studies)GeographyDeep LearningComputer VisionHyperspectral ImagingLand Cover MapCoastal ManagementRemote SensingMedicineImage Classification (Electrical Engineering)
The main challenge in extracting coastal aquaculture ponds is how to weaken the influence of the “same-spectrum foreign objects” effect and how to improve the definition of the boundary and accuracy of the extraction results of coastal aquaculture ponds. In this study, a recognition model based on the U2-Net deep learning model using remote sensing images for extracting coastal aquaculture ponds has been constructed. Firstly, image preprocessing is performed to amplify the spectral features. Second, samples are produced by visual interpretation. Third, the U2-Net deep learning model is used to train and extract aquaculture ponds along the coastal region. Finally, post-processing is performed to optimize the extraction results of the model. This method was validated in experiments in the Zhoushan Archipelago, China. The experimental results show that the average F-measure of the method in the study for the four study cases reaches 0.93, and the average precision and average recall rate are 92.21% and 93.79%, which is suitable for extraction applications in aquaculture ponds along the coastal region. This study can quickly and accurately carry out the mapping of coastal aquaculture ponds and can provide technical support for marine resource management and sustainable development.
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