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Main Authors: Ayna, Cemre Omer, Gunturk, Bahadir Kursat, Gurbuz, Ali Cafer
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.14421
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author Ayna, Cemre Omer
Gunturk, Bahadir Kursat
Gurbuz, Ali Cafer
author_facet Ayna, Cemre Omer
Gunturk, Bahadir Kursat
Gurbuz, Ali Cafer
contents Color Filter Arrays (CFA) are optical filters in digital cameras that capture specific color channels. Current commercial CFAs are hand-crafted patterns with different physical and application-specific considerations. This study proposes a binary CFA learning module based on hard thresholding with a deep learning-based demosaicing network in a joint architecture. Unlike most existing learnable CFAs that learn a channel from the whole color spectrum or linearly combine available digital colors, this method learns a binary channel selection, resulting in CFAs that are practical and physically implementable to digital cameras. The binary selection is based on adapting the hard thresholding operation into neural networks via a straight-through estimator, and therefore it is named HardMax. This paper includes the background on the CFA design problem, the description of the HardMax method, and the performance evaluation results. The evaluation of the proposed method includes tests for different demosaicing models, color configurations, filter sizes, and a comparison with existing methods in various reconstruction metrics. The proposed approach is tested with Kodak and BSDS500 datasets and provides higher reconstruction performance than hand-crafted or alternative learned binary filters.
format Preprint
id arxiv_https___arxiv_org_abs_2406_14421
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Learning Binary Color Filter Arrays with Trainable Hard Thresholding
Ayna, Cemre Omer
Gunturk, Bahadir Kursat
Gurbuz, Ali Cafer
Image and Video Processing
Color Filter Arrays (CFA) are optical filters in digital cameras that capture specific color channels. Current commercial CFAs are hand-crafted patterns with different physical and application-specific considerations. This study proposes a binary CFA learning module based on hard thresholding with a deep learning-based demosaicing network in a joint architecture. Unlike most existing learnable CFAs that learn a channel from the whole color spectrum or linearly combine available digital colors, this method learns a binary channel selection, resulting in CFAs that are practical and physically implementable to digital cameras. The binary selection is based on adapting the hard thresholding operation into neural networks via a straight-through estimator, and therefore it is named HardMax. This paper includes the background on the CFA design problem, the description of the HardMax method, and the performance evaluation results. The evaluation of the proposed method includes tests for different demosaicing models, color configurations, filter sizes, and a comparison with existing methods in various reconstruction metrics. The proposed approach is tested with Kodak and BSDS500 datasets and provides higher reconstruction performance than hand-crafted or alternative learned binary filters.
title Learning Binary Color Filter Arrays with Trainable Hard Thresholding
topic Image and Video Processing
url https://arxiv.org/abs/2406.14421