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Referenceless perceptual fog density prediction model

Authors
Choi, L.K.You, Jae heeBovik, A.C.
Issue Date
2014
Publisher
SPIE
Keywords
defog algorithm assessment; Fog; fog aware; fog density; fog visibility; natural scene statistics
Citation
Proceedings of SPIE - The International Society for Optical Engineering, v.9014
Journal Title
Proceedings of SPIE - The International Society for Optical Engineering
Volume
9014
URI
https://scholarworks.bwise.kr/hongik/handle/2020.sw.hongik/16418
DOI
10.1117/12.2036477
ISSN
0277-786X
Abstract
We propose a perceptual fog density prediction model based on natural scene statistics (NSS) and for verification statistical features, which can predict the visibility in a foggy scene from a single image without reference to a corresponding fogless image, without side geographical camera information, without training on human-rated judgments, and without dependency on salient objects such as lane markings or traffic signs. The proposed fog density predictor only makes use of measurable deviations from statistical regularities observed in natural foggy and fog-free images. A fog aware collection of statistical features is derived from a corpus of foggy and fog-free images by using a space domain NSS model and observed characteristics of foggy images such as low contrast, faint color, and shifted intensity. The proposed model not only predicts perceptual fog density for the entire image but also provides a local fog density index for each patch. The predicted fog density of the model correlates well with the measured visibility in a foggy scene as measured by judgments taken in a human subjective study on a large foggy image database. As one application, the proposed model accurately evaluates the performance of defog algorithms designed to enhance the visibility of foggy images.. © 2014 SPIE-IS&T.
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