Abstract
Global environment monitoring is a task that requires additional
attention in the contemporary rapid climate change environment. This
includes monitoring the rate of deforestation and areas affected by
flooding. Satellite imaging has greatly helped monitor the earth, and
deep learning techniques have helped to automate this monitoring
process. This paper proposes a solution for observing the area covered
by the forest and water as an element of global environment monitoring.
To achieve this task UNet model has been proposed, which is an image
segmentation model. Our model achieved a validation accuracy of 82.55%
and 82.92% for the segmentation of areas covered by forest and water,
respectively.