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Cascading Convolutional Color Constancy

Huanglin Yu, Ke Chen, Kaiqi Wang, Yanlin Qian, Zhaoxiang Zhang, Kui Jia

2020Proceedings of the AAAI Conference on Artificial Intelligence51 citationsDOIOpen Access PDF

Abstract

Regressing the illumination of a scene from the representations of object appearances is popularly adopted in computational color constancy. However, it's still challenging due to intrinsic appearance and label ambiguities caused by unknown illuminants, diverse reflection properties of materials and extrinsic imaging factors (such as different camera sensors). In this paper, we introduce a novel algorithm – Cascading Convolutional Color Constancy (in short, C4) to improve robustness of regression learning and achieve stable generalization capability across datasets (different cameras and scenes) in a unique framework. The proposed C4 method ensembles a series of dependent illumination hypotheses from each cascade stage via introducing a weighted multiply-accumulate loss function, which can inherently capture different modes of illuminations and explicitly enforce coarse-to-fine network optimization. Experimental results on the public Color Checker and NUS 8-Camera benchmarks demonstrate superior performance of the proposed algorithm in comparison with the state-of-the-art methods, especially for more difficult scenes.

Topics & Concepts

Color constancyArtificial intelligenceComputer scienceRobustness (evolution)Computer visionCascadeConvolutional neural networkGeneralizationPattern recognition (psychology)AlgorithmImage (mathematics)MathematicsBiochemistryGeneChromatographyChemistryMathematical analysisColor Science and ApplicationsImage Enhancement Techniquesmelanin and skin pigmentation
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