A Generalized Low-Rank Appearance Model for Spatio-temporally Correlated Rain Streaks

Computer Vision(2013)

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摘要
In this paper, we propose a novel low-rank appearance model for removing rain streaks. Different from previous work, our method needs neither rain pixel detection nor time-consuming dictionary learning stage. Instead, as rain streaks usually reveal similar and repeated patterns on imaging scene, we propose and generalize a low-rank model from matrix to tensor structure in order to capture the spatio-temporally correlated rain streaks. With the appearance model, we thus remove rain streaks from image/video (and also other high-order image structure) in a unified way. Our experimental results demonstrate competitive (or even better) visual quality and efficient run-time in comparison with state of the art.
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关键词
novel low-rank appearance model,low-rank model,video signal processing,rain streak removal,tensor structure,high-order image structure,spatio-temporally correlated rain streak,imaging scene,appearance model,efficient run-time,image-video,rain streak,spatio-temporally correlated rain streaks,rain pixel detection,generalized low-rank appearance model,spatiotemporally-correlated rain streaks,tensors,visual quality
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