Proposed Framework for Anomalous Change Detection

For the anomalous change detection problem, you have a pair of images, taken of the same scene, but at difierent times and typically under difierent viewing conditions. You are looking for interesting difierences between the two images. There will be some difierences thatarepervasive,perhapsduetooverall contrast, brightness or focus difierences, or maybe due to atmospheric or even seasonal changes { but there may also be changes that occur in only a few pixels. These rare changes are potentially indicative of something truly changinginthescene,andtheideaisto

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