Skip to content

FastDVDnet: A Very Fast Deep Video Denoising algorithm

Notifications You must be signed in to change notification settings

videogorillas/fastdvdnet

 
 

Repository files navigation

python run_fastdvdnet.py --read_path /svlk/anton/malfunk/16mm_BRIAN_3/ --save_path /tmp/

A state-of-the-art, simple and fast network for Deep Video Denoising which uses no motion compensation

Previous deep video denoising algorithm: DVDnet

Overview

This source code provides a PyTorch implementation of FastDVDnet image denoising, as in Tassano, Matias and Delon, Julie and Veit, Thomas. "FastDVDnet: Towards Real-Time Video Denoising Without Explicit Motion Estimation", arXiv preprint arXiv:1907.01361 (2019).

Video examples

Coming soon

User Guide

The code as is runs in Python +3.6 with the following dependencies:

Dependencies

Usage

Testing

If you want to denoise an image sequence using the pretrained model you can execute

test_fastdvdnet.py \
	--test_path <path_to_input_sequence> \
	--noise_sigma 30 \
	--save_path results

NOTES

  • The image sequence should be stored under <path_to_input_sequence>
  • The model has been trained for values of noise in [5, 55]
  • run with --no_gpu to run on CPU instead of GPU
  • run with --save_noisy to save noisy frames
  • set max_num_fr_per_seq to set the max number of frames to load per sequence
  • run with --help to see details on all input parameters

Training

If you want to train your own models you can execute

train_fastdvdnet.py \
	--trainset_dir <path_to_input_mp4s> \
	--valset_dir <path_to_val_sequences> \
	--log_dir logs

NOTES

  • As the dataloader in based on the DALI library, the training sequences must be provided as mp4 files, all under <path_to_input_mp4s>
  • The validation sequences must be stored as image sequences in individual folders under <path_to_val_sequences>
  • run with --help to see details on all input parameters

ABOUT

Copying and distribution of this file, with or without modification, are permitted in any medium without royalty provided the copyright notice and this notice are preserved. This file is offered as-is, without any warranty.

  • Author : Matias Tassano matias dot tassano at parisdescartes dot fr
  • Copyright : (C) 2019 Matias Tassano
  • Licence : GPL v3+, see GPLv3.txt

The sequences are Copyright GoPro 2018

About

FastDVDnet: A Very Fast Deep Video Denoising algorithm

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 73.1%
  • Shell 25.1%
  • Dockerfile 1.8%