Paper: https://arxiv.org/abs/2301.05187
Download image and occupancy examples from here. Place it in path/to/this/folder/data/.
check requirements.txt. This code was tested on python 3.8 in both Windows and Linux environments. Requirements file generated in Linux environment but should work similarly in a Windows environment.
Check wire_image_denoise.py for denoise an image. We have included an example image from div2k in data/parrot.png.
Check wire_occupancy.py for fitting a 3D shape with occupancy information. For simplicity, we have included occupancy volume of Thai statue with regular sampling over 512x512x512 cube.
Check wire_multi_sr.py for performing super-resolution with multiple images captured with small motion between the frames. We have included an example image data/kodak.png for this script.
Please check wire_ct.py for reconstructing images from computed tomographic measurements. We have included an example image data/chest.png.
-
wire_image_denoise.py: Runs training script for a single image -
wire_occupancy.py: Runs training script for a uniformly sampled occupancy of a 3D shape -
wire_multi_sr.py: Runs training script for solving multi-image super-resolution -
wire_ct.py: Runs training script for solving the computed tomography problem -
requirements.txt: All requirements for running scripts in this folder -
modules: Contains functions to run the training scripts:a.
lin_inverse.py: Includes forward operator for computed tomographyb.
motion.py: Contains functions for handling multi-image super resolution data generationc.
models.py: Common wrapper to instantiate all INR modelsd.
utils.py: Miscellaneous utilitiese.
volutils.py: Utilities for handling volume signalsf.
wire.py: Contains definitions for implementing WIRE.g.
wire2d.py: Contains definition for 2d wire as shown in section 4.4 in the main paper.h.
mfn.py: Contains multiplicative frequency networks implementation by the authors of the original paperi.
relu.py: Contains relu and positional encoding implementationj.
siren.py: Contains original implementation of SIRENk.
gauss.py: Contains implementation of Gaussian nonlinearity
@inproceedings{saragadam2022wire,
title={WIRE: Wavelet Implicit Neural Representations},
author={Saragadam, Vishwanath and LeJeune, Daniel and Tan, Jasper and Balakrishnan, Guha and Veeraraghavan, Ashok and Baraniuk, Richard G},
booktitle={arXiv preprint arXiv:2301.05187}
year={2022}
}
