Removal of clouds from satellite images using time compositing techniques
Atma Bharathi Mani, Nagashree TR, Manavalan P, Diwakar PG

TL;DR
This paper compares different time compositing techniques to effectively remove clouds from satellite images, proposing a hybrid method that improves cloud detection and image quality.
Contribution
It introduces a hybrid cloud removal technique combining 'min' and 'max' functions for better cloud detection and image quality in satellite imagery.
Findings
The 'min' function yields smoother, higher-quality images.
The 'max' function clearly identifies persistent clouds.
The hybrid method combines advantages of both approaches.
Abstract
Clouds in satellite images are a deterrent to qualitative and quantitative study. Time compositing methods compare a series of co-registered images and retrieve only those pixels that have comparatively lesser cloud cover for the resultant image. Two different approaches of time compositing were tested. The first method recoded the clouds to value 0 on all the constituent images and ran a 'max' function. The second method directly ran a 'min' function without recoding on all the images for the resultant image. The 'max' function gave a highly mottled image while the 'min' function gave a superior quality image with smoother texture. Persistent clouds on all constituent images were retained in both methods, but they were readily identifiable and easily extractable in the 'max' function image as they were recoded to 0, while that in the 'min' function appeared with varying DN values.…
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Taxonomy
TopicsGeochemistry and Geologic Mapping · Medical Image Segmentation Techniques · Image Processing and 3D Reconstruction
