Nowaday, expanding the application of deep learning technology is attracting attention of many researchers in the field of remote sensing. This paper presents methodology of using deep convolutional neural network model to determine the position of shoreline on Sentinel 2 satellite image. The methodology also provides techniques to reduce model retraining while ensuring the accuracy of the results. Methodological evaluation and analysis were conducted in the Mekong Delta region. The results from the study showed that interpolating the input images and calibrating the result thresholds improve accuracy and allow the trained deep learning model to externally test different images. The paper also evaluates the impact of the training dataset on...
Coastal land cover classification is a significant yet challenging task in remote sensing because of...
PosterEnvironmental monitoring and early warning of water quality from space is now feasible at unpr...
International audienceAbstract. In the context of the increasing anthropogenic influence on the coas...
International audienceThe ability to monitor the evolution of the coastal zone over time is an impor...
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
Monitoring shoreline change is one of the essential tasks for sustainable coastal zone management. D...
Satellite-Derived Bathymetry (SDB) can be calculated using analytical or empirical approaches. Analy...
This study examines the use of a machine learning framework for predicting seafloor depth and coastl...
Monitoring and measuring the shoreline of coastal zones helps establish the boundary of a country. S...
International audienceKnowledge of the evolution of the littoral zone over time is paramount for coa...
International audienceAgainst the backdrop of the environmental crisis, the socioeconomic , ecologic...
Coastal land cover classification is a significant yet challenging task in remote sensing because of...
PosterEnvironmental monitoring and early warning of water quality from space is now feasible at unpr...
International audienceAbstract. In the context of the increasing anthropogenic influence on the coas...
International audienceThe ability to monitor the evolution of the coastal zone over time is an impor...
This is the author accepted manuscript. The final version is available from Elsevier via the DOI in ...
Monitoring shoreline change is one of the essential tasks for sustainable coastal zone management. D...
Satellite-Derived Bathymetry (SDB) can be calculated using analytical or empirical approaches. Analy...
This study examines the use of a machine learning framework for predicting seafloor depth and coastl...
Monitoring and measuring the shoreline of coastal zones helps establish the boundary of a country. S...
International audienceKnowledge of the evolution of the littoral zone over time is paramount for coa...
International audienceAgainst the backdrop of the environmental crisis, the socioeconomic , ecologic...
Coastal land cover classification is a significant yet challenging task in remote sensing because of...
PosterEnvironmental monitoring and early warning of water quality from space is now feasible at unpr...
International audienceAbstract. In the context of the increasing anthropogenic influence on the coas...