Description
Series of weights recovered by training the ligthning
torch model
UnrolledSystem implemented in:
(Unrolled demosaicking)[https://github.com/mattmull42/unrolled_demosaicking]
The network was trained over 15 color filter array patterns:
bayer
binning
chakrabarti
gindele
hamilton
honda
honda2
kaizu
kodak
luo
quad_bayer
random
sparse_3
wang
The network is based on U-NET, unrolled over 4 stages, and plugged into an ADMM solver. The network is trained over 300 natural images, cut into patches of size 64 x 64.
The three versions given in this repository are:
4
: Baseline weights.4B
: Variant with different training set.4V
: Introduces geometric transformations on the patterns.
Citation
If you use this dataset, please cite:
@InProceedings{muller_eusipco_2024,
author = {Muller, Matthieu and Picone, Daniele and Dalla Mura, Mauro and Ulfarsson, Magnus Orn},
booktitle = {European Signal Processing Conference ({EUSIPCO})},
title = {Pattern-invariant unrolling for robust demosaicking},
year = {2024},
}