Arrechea-Castillo, Darwin AlexisSolano-Correa, Yady TatianaMuñoz-Ordoñez, Julián FernandoPencue-Fierro, Edgar Leonairo2024-09-122024-09-122024-07-122024-09-11D.A. Arrechea-Castillo; Y. T. Solano-Correa; J.F. Muñoz-Ordóñez; E. L. Pencue-Fierro, "A Deep Learning Approach To Cloud And Shadow Detection In Multiresolution, Multitemporal And Multisensor Images," in 2024 IEEE International Geoscience and Remote Sensing Symposium (IGARSS), Athens, Greece, Jul. 2024. DOI: 10.1109/IGARSS53475.2024.10640766.https://hdl.handle.net/20.500.12585/12731Accurate detection of clouds and shadows present in optical imagery is important in remote sensing for ensuring data quality and reliability. This study introduces a deep learning model capable of generating precise cloud and shadows masks for subsequent filtering. Unlike other works in literature, this model operates efficiently across diverse temporalities, sensors, and spatial resolutions, without the need for any relative or absolute transformation of the original data. This versatility, to date unreported in the literature, marks a significant advancement in the field. The model utilizes data from PlanetScope, Landsat and Sentinel-2 sensors and is based on a simplified convolutional neural network (CNN) architecture, LeNet, which facilitates easy training on standard computers with minimal time requirements. Despite its simplicity, the model demonstrates robustness, achieving accuracy metrics over 96% in validation data. These results show the model potential in transforming cloud and shadow detection in remote sensing, combining ease of use with high accuracy.4 páginasapplication/pdfengA Deep Learning Approach To Cloud And Shadow Detection In Multiresolution, Multitemporal And Multisensor Imagesinfo:eu-repo/semantics/lecture10.1109/IGARSS53475.2024.10640766Cloud DetectionCloud Shadow DetectionDeep LearningRemote SensingMultiSensorinfo:eu-repo/semantics/closedAccessUniversidad Tecnológica de BolívarRepositorio Universidad Tecnológica de BolívarLEMB