A framework for joint super-resolution and image synthesis, without requiring real training data

Related tags

Deep LearningSynthSR
Overview

SynthSR

This repository contains code to train a Convolutional Neural Network (CNN) for Super-resolution (SR), or joint SR and data synthesis. The method can also be configured to achieve denoising and bias field correction.

The network takes synthetic scans generated on the fly as inputs, and can be trained to regress either real or synthetic target scans. The synthetic scans are obtained by sampling a generative model building on the SynthSeg [1] package, which we really encourage you to have a look at!


In short, synthetic scans are generated at each mini-batch by: 1) randomly selecting a label map among of pool of training segmentations, 2) spatially deforming it in 3D, 3) sampling a Gaussian Mixture Model (GMM) conditioned on the deformed label map (see Figure 1 below), and 4) corrupting with a random bias field. This gives us a synthetic scan at high resolution (HR). We then simulate thick slice spacing by blurring and downsampling it to low resolution (LR). In SR, we then train a network to learn the mapping between LR data (possibly multimodal, hence the joint synthesis) and HR synthetic scans. Moreover If real images are available along with the training label maps, we can learn to regress the real images instead.


Training overview Figure 1: overview of SynthSR


Tutorials for Generation and Training

This repository contains code to train your own network for SR or joint SR and synthesis. Because the training function has a lot of options, we provide here some tutorials to familiarise yourself with the different training/generation parameters. We emphasise that we provide example training data along with these scripts: 5 preprocessed publicly available T1 scans at 1mm isotropic resolution [2] with corresponding label maps obtained with FreeSurfer [3]. The tutorials can be found in scripts, and they include:

  • Six generation scripts corresponding to different use cases (see Figure 2 below). We recommend to go through them all, (even if you're only interested in case 1), since we successively introduce different functionalities as we go through.

  • One training script, explaining the main training parameters.

  • One script explaining how to estimate the parameters governing the GMM, in case you wish to train a model on your own data.


Training overview Figure 2: Examples generated by running the tutorials on the provided data [2]. For each use case, we show the synhtetic images used as inputs to the network, as well as the regression target.


Content

  • SynthSR: this is the main folder containing the generative model and training function:

    • labels_to_image_model.py: builds the generative model.

    • brain_generator.py: contains the class BrainGenerator, which is a wrapper around the model. New images can simply be generated by instantiating an object of this class, and calling the method generate_image().

    • model_inputs.py: prepares the inputs of the generative model.

    • training.py: contains the function to train the network. All training parameters are explained there.

    • metrics_model.py: contains a Keras model that implements diffrent loss functions.

    • estimate_priors.py: contains functions to estimate the prior distributions of the GMM parameters.

  • data: this folder contains the data for the tutorials (T1 scans [2], corresponding FreeSurfer segmentations and some other useful files)

  • script: additionally to the tutorials, we also provide a script to launch trainings from the terminal

  • ext: contains external packages.


Requirements

This code relies on several external packages (already included in \ext):

  • lab2im: contains functions for data augmentation, and a simple version of the generative model, on which we build to build label_to_image_model [1]

  • neuron: contains functions for deforming, and resizing tensors, as well as functions to build the segmentation network [4,5].

  • pytool-lib: library required by the neuron package.

All the other requirements are listed in requirements.txt. We list here the most important dependencies:

  • tensorflow-gpu 2.0
  • tensorflow_probability 0.8
  • keras > 2.0
  • cuda 10.0 (required by tensorflow)
  • cudnn 7.0
  • nibabel
  • numpy, scipy, sklearn, tqdm, pillow, matplotlib, ipython, ...

Citation/Contact

This repository contains the code related to a submission that is still under review.

If you have any question regarding the usage of this code, or any suggestions to improve it you can contact us at:
[email protected]


References

[1] A Learning Strategy for Contrast-agnostic MRI Segmentation
Benjamin Billot, Douglas N. Greve, Koen Van Leemput, Bruce Fischl, Juan Eugenio Iglesias*, Adrian V. Dalca*
*contributed equally
MIDL 2020

[2] A novel in vivo atlas of human hippocampal subfields usinghigh-resolution 3 T magnetic resonance imaging
J. Winterburn, J. Pruessner, S. Chavez, M. Schira, N. Lobaugh, A. Voineskos, M. Chakravarty
NeuroImage (2013)

[3] FreeSurfer
Bruce Fischl
NeuroImage (2012)

[4] Anatomical Priors in Convolutional Networks for Unsupervised Biomedical Segmentation
Adrian V. Dalca, John Guttag, Mert R. Sabuncu
CVPR 2018

[5] Unsupervised Data Imputation via Variational Inference of Deep Subspaces
Adrian V. Dalca, John Guttag, Mert R. Sabuncu
Arxiv preprint (2019)

OpenL3: Open-source deep audio and image embeddings

OpenL3 OpenL3 is an open-source Python library for computing deep audio and image embeddings. Please refer to the documentation for detailed instructi

Music and Audio Research Laboratory - NYU 326 Jan 02, 2023
Modular Gaussian Processes

Modular Gaussian Processes for Transfer Learning đŸ§© Introduction This repository contains the implementation of our paper Modular Gaussian Processes f

Pablo Moreno-Muñoz 10 Mar 15, 2022
Using fully convolutional networks for semantic segmentation with caffe for the cityscapes dataset

Using fully convolutional networks for semantic segmentation (Shelhamer et al.) with caffe for the cityscapes dataset How to get started Download the

Simon Guist 27 Jun 06, 2022
PyTorch implementation for "HyperSPNs: Compact and Expressive Probabilistic Circuits", NeurIPS 2021

HyperSPN This repository contains code for the paper: HyperSPNs: Compact and Expressive Probabilistic Circuits "HyperSPNs: Compact and Expressive Prob

8 Nov 08, 2022
A custom DeepStack model that has been trained detecting ONLY the USPS logo

This repository provides a custom DeepStack model that has been trained detecting ONLY the USPS logo. This was created after I discovered that the Deepstack OpenLogo custom model I was using did not

Stephen Stratoti 9 Dec 27, 2022
Suite of 500 procedurally-generated NLP tasks to study language model adaptability

TaskBench500 The TaskBench500 dataset and code for generating tasks. Data The TaskBench dataset is available under wget http://web.mit.edu/bzl/www/Tas

Belinda Li 20 May 17, 2022
Geometric Algebra package for JAX

JAXGA - JAX Geometric Algebra GitHub | Docs JAXGA is a Geometric Algebra package on top of JAX. It can handle high dimensional algebras by storing onl

Robin Kahlow 36 Dec 22, 2022
Video Background Music Generation with Controllable Music Transformer (ACM MM 2021 Oral)

CMT Code for paper Video Background Music Generation with Controllable Music Transformer (ACM MM 2021 Best Paper Award) [Paper] [Site] Directory Struc

Zhaokai Wang 198 Dec 27, 2022
Swin-Transformer is basically a hierarchical Transformer whose representation is computed with shifted windows.

Swin-Transformer Swin-Transformer is basically a hierarchical Transformer whose representation is computed with shifted windows. For more details, ple

æ—·è§†ć€©ć…ƒ MegEngine 9 Mar 14, 2022
A general framework for deep learning experiments under PyTorch based on pytorch-lightning

torchx Torchx is a general framework for deep learning experiments under PyTorch based on pytorch-lightning. TODO list gan-like training wrapper text

Yingtian Liu 6 Mar 17, 2022
Automatic tool focused on deriving metallicities of open clusters

metalcode Automatic tool focused on deriving metallicities of open clusters. Based on the method described in Pöhnl & Paunzen (2010, https://ui.adsabs

2 Dec 13, 2021
Modifications of the official PyTorch implementation of StyleGAN3. Let's easily generate images and videos with StyleGAN2/2-ADA/3!

Alias-Free Generative Adversarial Networks (StyleGAN3) Official PyTorch implementation of the NeurIPS 2021 paper Alias-Free Generative Adversarial Net

Diego Porres 185 Dec 24, 2022
Visual Tracking by TridenAlign and Context Embedding

Visual Tracking by TridentAlign and Context Embedding (TACT) Test code for "Visual Tracking by TridentAlign and Context Embedding" Janghoon Choi, Juns

Janghoon Choi 32 Aug 25, 2021
Web mining module for Python, with tools for scraping, natural language processing, machine learning, network analysis and visualization.

Pattern Pattern is a web mining module for Python. It has tools for: Data Mining: web services (Google, Twitter, Wikipedia), web crawler, HTML DOM par

Computational Linguistics Research Group 8.4k Jan 03, 2023
This is the official code of our paper "Diversity-based Trajectory and Goal Selection with Hindsight Experience Relay" (PRICAI 2021)

Diversity-based Trajectory and Goal Selection with Hindsight Experience Replay This is the official implementation of our paper "Diversity-based Traje

Tianhong Dai 6 Jul 18, 2022
Scalable implementation of Lee / Mykland (2012) and Ait-Sahalia / Jacod (2012) Jump tests for noisy high frequency data

JumpDetectR Name of QuantLet : JumpDetectR Published in : 'To be published as "Jump dynamics in high frequency crypto markets"' Description : 'Scala

LvB 12 Jan 01, 2023
ML course - EPFL Machine Learning Course, Fall 2021

EPFL Machine Learning Course CS-433 Machine Learning Course, Fall 2021 Repository for all lecture notes, labs and projects - resources, code templates

EPFL Machine Learning and Optimization Laboratory 1k Jan 04, 2023
Deploy recommendation engines with Edge Computing

RecoEdge: Bringing Recommendations to the Edge A one stop solution to build your recommendation models, train them and, deploy them in a privacy prese

NimbleEdge 131 Jan 02, 2023
Official respository for "Modeling Defocus-Disparity in Dual-Pixel Sensors", ICCP 2020

Official respository for "Modeling Defocus-Disparity in Dual-Pixel Sensors", ICCP 2020 BibTeX @INPROCEEDINGS{punnappurath2020modeling, author={Abhi

Abhijith Punnappurath 22 Oct 01, 2022
An open-source Deep Learning Engine for Healthcare that aims to treat & prevent major diseases

AlphaCare Background AlphaCare is a work-in-progress, open-source Deep Learning Engine for Healthcare that aims to treat and prevent major diseases. T

Siraj Raval 44 Nov 05, 2022