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Iterative Convolutional Neural Network-Based Illumination Estimation (CROSBI ID 290921)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Koščević, Karlo ; Subašić, Marko ; Lončarić, Sven Iterative Convolutional Neural Network-Based Illumination Estimation // IEEE access, 9 (2021), 26755-26765. doi: 10.1109/ACCESS.2021.3057072

Podaci o odgovornosti

Koščević, Karlo ; Subašić, Marko ; Lončarić, Sven

engleski

Iterative Convolutional Neural Network-Based Illumination Estimation

In the image processing pipelines of digital cameras, one of the first steps is to achieve invariance in terms of scene illumination, namely computational color constancy. Usually, this is done in two successive steps which are illumination estimation and chromatic adaptation. The illumination estimation aims at estimating a three-dimensional vector from image pixels. This vector represents the scene illumination, and it is used in the chromatic adaptation step, which aims at eliminating the bias in image colors caused by the color of the illumination. An accurate illumination estimation is crucial for successful computational color constancy. However, this is an ill-posed problem, and many methods try to comprehend it with different assumptions. In this paper, an iterative method for estimating the scene illumination color is proposed. The method calculates the illumination vector by a series of intermediate illumination estimations and chromatic adaptations of an input image using a convolutional neural network. The network has been trained to iteratively compute intermediate incremental illumination estimates from the original image. Incremental illumination estimates are combined by per element multiplication to obtain the final illumination estimation. The approach is aimed to reduce large estimation errors usually occurring with highly saturated light sources. Experimental results show that the proposed method outperforms the vast majority of illumination estimation methods in terms of median angular error. Moreover, in terms of worst-performing samples, i.e., the samples for which a method errs the most, the proposed method outperforms all other methods by a margin of more than 18% with respect to the mean of estimation errors in the third quartile.

chromatic adaptation ; color constancy ; convolutional neural networks ; illumination estimation ; image color analysis

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Podaci o izdanju

9

2021.

26755-26765

objavljeno

2169-3536

10.1109/ACCESS.2021.3057072

Povezanost rada

Računarstvo

Poveznice