Adversarial Framework for (non-) Parametric Image Stylisation Mosaics

Overview

Fully Adversarial Mosaics (FAMOS)

Pytorch implementation of the paper "Copy the Old or Paint Anew? An Adversarial Framework for (non-) Parametric Image Stylization" available at http://arxiv.org/abs/1811.09236.

This code allows to generate image stylisation using an adversarial approach combining parametric and non-parametric elements. Tested to work on Ubuntu 16.04, Pytorch 0.4, Python 3.6. Nvidia GPU p100. It is recommended to have a GPU with 12, 16GB, or more of VRAM.

Parameters

Our method has many possible settings. You can specify them with command-line parameters. The options parser that defines these parameters is in the config.py file and the options are parsed there. You are free to explore them and discover the functionality of FAMOS, which can cover a very broad range of image stylization settings.

There are 5 groups of parameter types:

  • data path and loading parameters
  • neural network parameters
  • regularization and loss criteria weighting parameters
  • optimization parameters
  • parameters of the stochastic noise -- see PSGAN

Update Febr. 2019: video frame-by-frame rendering supported

mosaicGAN.py can now render a whole folder of test images with the trained model. Example videos: lion video with Münich and Berlin

Just specify

python mosaicGAN.py --texturePath=samples/milano/ --contentPath=myFolder/ --testImage=myFolder/ 

with your myFolder and all images from that folder will be rendered by the generator of the GAN. Best to use the same test folder as content folder for training. To use in a video editing pipeline, save all video frames as images with a tool like AVIDEMUX, train FAMOS and save rendered frames, assemble again as video. Note: this my take some time to render thousands of images, you can edit in the code VIDEO_SAVE_FREQ to render the test image folder less frequently.

Update Jan. 2019: new functionality for texture synthesis

Due to interest in a new Pytorch implementation of our last paper "Texture Synthesis with Spatial Generative Adversarial Networks" (PSGAN) we added a script reimplementing it in the current repository. It shares many components with the texture mosaic stylization approach. A difference: PSGAN has no content image and loss, the generator is conditioned only on noise. Example call for texture synthesis:

python PSGAN.py --texturePath=samples/milano/ --ngf=120 --zLoc=50 --ndf=120 --nDep=5 --nDepD=5 --batchSize=16

In general, texture synthesis is much faster than the other methods in this repository, so feel free to add more channels and increase th batchsize. For more details and inspiration how to play with texture synthesis see our old repository with Lasagne code for PSGAN.

Usage: parametric convolutional adversarial mosaic

We provide scripts that have a main loop in which we (i) train an adversarial stylization model and (ii) save images (inference mode). If you need it, you can easily modify the code to save a trained model and load it later to do inference on many other images, see comments at the end of mosaicGAN.py.

In the simplest case, let us start an adversarial mosaic using convolutional networks. All you need is to specify the texture and content folders:

python mosaicGAN.py --texturePath=samples/milano/ --contentPath=samples/archimboldo/

This repository includes sample style files (4 satellite views of Milano, from Google Maps) and a portrait of Archimboldo (from the Google Art Project). Our GAN method will start running and training, occasionally saving results in "results/milano/archimboldo/" and printing the loss values to the terminal. Note that we use the first image found in contentPath as the default full-size output image stylization from FAMOS. You can also specify another image file name testImage to do out-of-sample stylization (inference).

This version uses DCGAN by default, which works nicely for the convolutional GAN we have here. Add the parameter LS for a least squares loss, which also works nicely. Interestingly, WGAN-GP is poorer for our model, which we did not investigate in detail.

If you want to tune the optimisation and model, you can adjust the layers and channels of the Generator and Discriminator, and also choose imageSize and batchSize. All this will effect the speed and performance of the model. You can also tweak the correspondance map cLoss and the content loss weighting fContent

python mosaicGAN.py --texturePath=samples/milano/ --contentPath=samples/archimboldo/ --imageSize=192 --batchSize=8 --ngf=80 --ndf=80  --nDepD=5  --nDep=4 --cLoss=101 --fContent=.6

Other interesting options are skipConnections and Ubottleneck. By disabling the skip connections of the Unet and defining a smaller bottleneck we can reduce the effect of the content image and emphasize more the texture style of the output.

Usage: the full FAMOS approach with parametric and non-parametric aspects

Our method has the property of being able to copy pixels from template images together with the convolutional generation of the previous section.

python mosaicFAMOS.py  --texturePath=samples/milano/ --contentPath=samples/archimboldo/ --N=80 --mirror=True --dIter=2 --WGAN=True

Here we specify N=80 memory templates to copy from. In addition, we use mirror augmentation to get nice kaleidoscope-like effects in the template (and texture distribution). We use the WGAN GAN criterium, which works better for the combined parametric/non-parametric case (experimenting with the usage of DCGAN and WGAN depending on the architecture is advised). We set to use dIter=2 D steps for each G step.

The code also supports a slightly more complicated implementation than the one described in the paper. By setting multiScale=True a mixed template of images I_M on multiple levels of the Unet is used. In addition, by setting nBlocks=2 we will add residual layers to the decoder of the Unet, for a model with even higher capacity. Finally, you can also set refine=True and add a second Unet to refine the results of the first one. Of course, all these additional layers come at a computational cost -- selecting the layer depth, channel width, and the use of all these additional modules is a matter of trade-off and experimenting.

python mosaicFAMOS.py  --texturePath=samples/milano/ --contentPath=samples/archimboldo/ --N=80 --mirror=True --multiScale=True --nBlocks=1 --dIter=2 --WGAN=True

The method will save mosaics occasionally, and optionally you can specify a testImage (size smaller than the initial content image) to check out-of-sample performance. You can check the patches image saved regularly how the patch based training proceeds. The files has a column per batch-instance, and 6 rows showing the quantities from the paper:

  • I_C content patch
  • I_M mixed template patch on highest scale
  • I_G parametric generation component
  • I blended patch
  • \alpha blending mask
  • A mixing matrix

License

Please make sure to cite/acknowledge our paper, if you use any of the contained code in your own projects or publication.

The MIT License (MIT)

Copyright © 2018 Zalando SE, https://tech.zalando.com

Permission is hereby granted, free of charge, to any person obtaining a copy of this software and associated documentation files (the "Software"), to deal in the Software without restriction, including without limitation the rights to use, copy, modify, merge, publish, distribute, sublicense, and/or sell copies of the Software, and to permit persons to whom the Software is furnished to do so, subject to the following conditions:

The above copyright notice and this permission notice shall be included in all copies or substantial portions of the Software.

THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE SOFTWARE.

Owner
Zalando Research
Repositories of the research branch of Zalando SE
Zalando Research
Implementation of Bagging and AdaBoost Algorithm

Bagging-and-AdaBoost Implementation of Bagging and AdaBoost Algorithm Dataset Red Wine Quality Data Sets For simplicity, we will have 2 classes of win

Zechen Ma 1 Nov 01, 2021
The source codes for ACL 2021 paper 'BoB: BERT Over BERT for Training Persona-based Dialogue Models from Limited Personalized Data'

BoB: BERT Over BERT for Training Persona-based Dialogue Models from Limited Personalized Data This repository provides the implementation details for

124 Dec 27, 2022
BanditPAM: Almost Linear-Time k-Medoids Clustering

BanditPAM: Almost Linear-Time k-Medoids Clustering This repo contains a high-performance implementation of BanditPAM from BanditPAM: Almost Linear-Tim

254 Dec 12, 2022
The first machine learning framework that encourages learning ML concepts instead of memorizing class functions.

SeaLion is designed to teach today's aspiring ml-engineers the popular machine learning concepts of today in a way that gives both intuition and ways of application. We do this through concise algori

Anish 324 Dec 27, 2022
Code for the paper "Zero-shot Natural Language Video Localization" (ICCV2021, Oral).

Zero-shot Natural Language Video Localization (ZSNLVL) by Pseudo-Supervised Video Localization (PSVL) This repository is for Zero-shot Natural Languag

Computer Vision Lab. @ GIST 37 Dec 27, 2022
Feed forward VQGAN-CLIP model, where the goal is to eliminate the need for optimizing the latent space of VQGAN for each input prompt

Feed forward VQGAN-CLIP model, where the goal is to eliminate the need for optimizing the latent space of VQGAN for each input prompt. This is done by

Mehdi Cherti 135 Dec 30, 2022
ESGD-M - A stochastic non-convex second order optimizer, suitable for training deep learning models, for PyTorch

ESGD-M - A stochastic non-convex second order optimizer, suitable for training deep learning models, for PyTorch

Katherine Crowson 53 Dec 29, 2022
Tools for computational pathology

A toolkit for computational pathology and machine learning. View documentation Please cite our paper Installation There are several ways to install Pa

254 Dec 12, 2022
Equivariant Imaging: Learning Beyond the Range Space

Equivariant Imaging: Learning Beyond the Range Space Equivariant Imaging: Learning Beyond the Range Space Dongdong Chen, Julián Tachella, Mike E. Davi

Dongdong Chen 46 Jan 01, 2023
NATS-Bench: Benchmarking NAS Algorithms for Architecture Topology and Size

NATS-Bench: Benchmarking NAS Algorithms for Architecture Topology and Size Xuanyi Dong, Lu Liu, Katarzyna Musial, Bogdan Gabrys in IEEE Transactions o

D-X-Y 137 Dec 20, 2022
Load What You Need: Smaller Multilingual Transformers for Pytorch and TensorFlow 2.0.

Smaller Multilingual Transformers This repository shares smaller versions of multilingual transformers that keep the same representations offered by t

Geotrend 79 Dec 28, 2022
Source code of our BMVC 2021 paper: AniFormer: Data-driven 3D Animation with Transformer

AniFormer This is the PyTorch implementation of our BMVC 2021 paper AniFormer: Data-driven 3D Animation with Transformer. Haoyu Chen, Hao Tang, Nicu S

24 Nov 02, 2022
A collection of semantic image segmentation models implemented in TensorFlow

A collection of semantic image segmentation models implemented in TensorFlow. Contains data-loaders for the generic and medical benchmark datasets.

bobby 16 Dec 06, 2019
T2F: text to face generation using Deep Learning

⭐ [NEW] ⭐ T2F - 2.0 Teaser (coming soon ...) Please note that all the faces in the above samples are generated ones. The T2F 2.0 will be using MSG-GAN

Animesh Karnewar 533 Dec 22, 2022
ALFRED - A Benchmark for Interpreting Grounded Instructions for Everyday Tasks

ALFRED A Benchmark for Interpreting Grounded Instructions for Everyday Tasks Mohit Shridhar, Jesse Thomason, Daniel Gordon, Yonatan Bisk, Winson Han,

ALFRED 204 Dec 15, 2022
Fine-grained Post-training for Improving Retrieval-based Dialogue Systems - NAACL 2021

Fine-grained Post-training for Multi-turn Response Selection Implements the model described in the following paper Fine-grained Post-training for Impr

Janghoon Han 83 Dec 20, 2022
[NeurIPS 2021] Code for Unsupervised Learning of Compositional Energy Concepts

Unsupervised Learning of Compositional Energy Concepts This is the pytorch code for the paper Unsupervised Learning of Compositional Energy Concepts.

45 Nov 30, 2022
Voice Conversion by CycleGAN (语音克隆/语音转换):CycleGAN-VC3

CycleGAN-VC3-PyTorch 中文说明 | English This code is a PyTorch implementation for paper: CycleGAN-VC3: Examining and Improving CycleGAN-VCs for Mel-spectr

Kun Ma 110 Dec 24, 2022
Framework for evaluating ANNS algorithms on billion scale datasets.

Billion-Scale ANN http://big-ann-benchmarks.com/ Install The only prerequisite is Python (tested with 3.6) and Docker. Works with newer versions of Py

Harsha Vardhan Simhadri 132 Dec 24, 2022
Code implementing "Improving Deep Learning Interpretability by Saliency Guided Training"

Saliency Guided Training Code implementing "Improving Deep Learning Interpretability by Saliency Guided Training" by Aya Abdelsalam Ismail, Hector Cor

8 Sep 22, 2022