2020
DOI: 10.1109/access.2020.2973655
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Selective Subtraction for Handheld Cameras

Abstract: Background subtraction techniques model the background of the scene using the stationarity property and classify the scene into two classes namely foreground and background. In doing so, most moving objects become foreground indiscriminately, except in dynamic scenes (such as those with some waving tree leaves, water ripples, or a water fountain), which are typically ''learned'' as part of the background using a large training set of video data. We introduce a novel concept of background as the objects other t… Show more

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References 35 publications
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