Abstract
Cloud and cloud shadow are the primary factors that affect the
application of remote sensing images, and they have always been problems
encountered in remote sensing image processing. This article puts
forward a new cloud removal strategy, whose data is from the Landsat
multi-source remote sensing images and based on an improved BP neural
network. Compared with the previous cloud removal methods, the selection
value of BP neural network training is changed to reduce human
participation. The previous gray-scale value group marked by
classification (Vegetation, water body, bare land, residential land, and
fields, etc.) is changed to the gray-scale value group of the two
images’ common areas without cloud. The experimental results show that
the de-cloud image got by our method has higher SSIM and Cosine
similarity with the reference image.