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Recovering Intrinsic Images from a Single Image (2002)

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by Marshall F Tappen , William T Freeman , Edward H Adelson
Citations:73 - 5 self
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BibTeX

@MISC{Tappen02recoveringintrinsic,
    author = {Marshall F Tappen and William T Freeman and Edward H Adelson},
    title = {Recovering Intrinsic Images from a Single Image},
    year = {2002}
}

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Abstract

We present an algorithm that uses multiple cues to recover shading and reflectance intrinsic images from a single image. Using both color information and a classifier trained to recognize gray-scale patterns, each image derivative is classified as being caused by shading or a change in the surface's reflectance. Generalized Belief Propagation is then used to propagate information from areas where the correct classification is clear to areas where it is ambiguous. We also show results on real images.

Citations

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1548 BConditional random fields: Probabilistic models for segmenting and labeling sequence data - Lafferty, McCallum, et al.
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331 Pyramid-based texture analysis/synthesis - Heeger, Bergen - 1995
308 Y: Generalized belief propagation - Yedidia, Freeman, et al.
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217 P.: Boosting image retrieval - Tieu, Viola - 2000
197 Statistical analysis of non-lattice data - Besag - 1975
177 The steerable pyramid: A flexible architecture for multi-scale derivative computation - Simoncelli, Freeman - 1995
156 Recovering intrinsic scene characteristics from images - Barrow, Tenenbaum - 1978
140 Deriving intrinsic images from image sequences - Weiss - 2001
128 On the removal of shadows from images - Finlayson, Hordley, et al. - 2006
84 Recognizing surfaces using three-dimensional textons - Leung, Malik - 1999
37 Nonlinear filtering of multiplied and convolved signals - Oppenheim, Schafer, et al. - 1968
35 Recovering shading from color images - Funt, Drew, et al. - 1992
25 M.: Illumination normalization with time-dependent intrinsic images for video surveillance - Matsushita, Nishino, et al. - 2004
20 Learning local evidence for shading and reflectance - Bell, Freeman - 2001
18 Color vision and image intensities: When are changes material - Rubin, Richards - 1982
12 Bayesian model of surface perception - Freeman, Viola - 1997
11 Recovering reflectance in a world of painted polyhedra - Sinha, Adelson - 1993
8 Pyramid-Based Texture Analysis - Heeger, Bergen - 1995
4 Robot Vision, chapter 9 - Horn - 1986
1 The Senses Considered as Perceptual Systems, chapter 10 - Gibson - 1966
1 Linear Shape from Shading,” lnt’l - Pentland - 1990
1 Color Vision and Image Intensities - Rubin, Richards - 1982
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