Building blocks for uncertainty-aware cycle consistency presented at NeurIPS'21.

Overview

UncertaintyAwareCycleConsistency

This repository provides the building blocks and the API for the work presented in the NeurIPS'21 paper Robustness via Uncertainty-aware Cycle Consistency. Translation methods often learn deterministic mappings without explicitly modelling the robustness to outliers or predictive uncertainty, leading to performance degradation when encountering unseen perturbations at test time. To address this, we propose a method based on Uncertainty-aware Generalized Adaptive Cycle Consistency (UGAC), which models the per-pixel residual by generalized Gaussian distribution, capable of modelling heavy-tailed distributions.

Requirements

python >= 3.6.10
pytorch >= 1.6.0
jupyter lab
torchio
scikit-image
scikit-learn

The structure of the repository is as follows:

root
 |-ckpt/ (will save all the checkpoints)
 |-data/ (save your data and related script)
 |-src/ (contains all the source code)
    |-ds.py 
    |-networks.py
    |-utils.py
    |-losses.py

Preparing Datasets

To prepare your datasets to use with this repo, place the root directory of the dataset in data/. The recommended way to structure your data is shown below.

data/
    |-Dataset_1/
        |-A/
            |-image1.png
            |-image2.png
            |-image3.png
            |-...
        |-B/
            |-image1.png
            |-image2.png
            |-image3.png
            |-...

Note the images need not be paired. The python script src/ds.py provides the PyTorch Dataset class to read such a dataset, used as explained below.

class Images_w_nameList(data.Dataset):
    '''
    can act as supervised or un-supervised based on flists
    '''
    def __init__(self, root1, root2, flist1, flist2, transform=None):

Here root1 and root2 represents the root directory for domain A and B, respectively. flist1 and flist2 contain image names for domain A and domain B. Note, if flist1 and flist2 are aligned then dataset will load paired images. To use it as unsupervised dataset loader ensure that flist1 and flist2 are not aligned.

Learning models with uncertainty

src/networks.py provides the generator and discriminator architectures.

src/utils.py provides the training API train_UGAC. The API is to train a pair of GANs, with the generators modified to predict the parameters of the generalized Gaussian distribution GGD ($\alpha$, $\beta$, $\mu$), as depicted in the above figure.

An example command to use the first API is:

#first instantiate the generators and discriminators
netG_A = CasUNet_3head(3,3)
netD_A = NLayerDiscriminator(3, n_layers=4)
netG_B = CasUNet_3head(3,3)
netD_B = NLayerDiscriminator(3, n_layers=4)

netG_A, netD_A, netG_B, netD_B = train_UGAC(
    netG_A, netG_B,
    netD_A, netD_B,
    train_loader,
    dtype=torch.cuda.FloatTensor,
    device='cuda',
    num_epochs=10,
    init_lr=1e-5,
    ckpt_path='../ckpt/ugac',
    list_of_hp = [1, 0.015, 0.01, 0.001, 1, 0.015, 0.01, 0.001, 0.05, 0.05, 0.01],
)

This will save checkpoints in ckpt/ named as ugac_eph*.pth. The arguement list_of_hp is a list of all the hyper-parameters representing weights of different weigths in the loss function.

Apart from the code in this repository, we also use the code from many other repositories like this, this, and this.

Bibtex

If you find the bits from this project helpful, please cite the following works:

Owner
EML Tübingen
Explainable Machine Learning group at University of Tübingen
EML Tübingen
TF2 implementation of knowledge distillation using the "function matching" hypothesis from the paper Knowledge distillation: A good teacher is patient and consistent by Beyer et al.

FunMatch-Distillation TF2 implementation of knowledge distillation using the "function matching" hypothesis from the paper Knowledge distillation: A g

Sayak Paul 67 Dec 20, 2022
Transferable Unrestricted Attacks, which won 1st place in CVPR’21 Security AI Challenger: Unrestricted Adversarial Attacks on ImageNet.

Transferable Unrestricted Adversarial Examples This is the PyTorch implementation of the Arxiv paper: Towards Transferable Unrestricted Adversarial Ex

equation 16 Dec 29, 2022
Face Recognition plus identification simply and fast | Python

PyFaceDetection Face Recognition plus identification simply and fast Ubuntu Setup sudo pip3 install numpy sudo pip3 install cmake sudo pip3 install dl

Peyman Majidi Moein 16 Sep 22, 2022
This repository stores the code to reproduce the results published in "TiWS-iForest: Isolation Forest in Weakly Supervised and Tiny ML scenarios"

TinyWeaklyIsolationForest This repository stores the code to reproduce the results published in "TiWS-iForest: Isolation Forest in Weakly Supervised a

2 Mar 21, 2022
Ensembling Off-the-shelf Models for GAN Training

Vision-aided GAN video (3m) | website | paper Can the collective knowledge from a large bank of pretrained vision models be leveraged to improve GAN t

345 Dec 28, 2022
Official implementation of paper Gradient Matching for Domain Generalization

Gradient Matching for Domain Generalisation This is the official PyTorch implementation of Gradient Matching for Domain Generalisation. In our paper,

94 Dec 23, 2022
Receptive Field Block Net for Accurate and Fast Object Detection, ECCV 2018

Receptive Field Block Net for Accurate and Fast Object Detection By Songtao Liu, Di Huang, Yunhong Wang Updatas (2021/07/23): YOLOX is here!, stronger

Liu Songtao 1.4k Dec 21, 2022
Point cloud processing tool library.

Point Cloud ToolBox This point cloud processing tool library can be used to process point clouds, 3d meshes, and voxels. Environment python 3.7.5 Dep

ZhangXinyun 40 Dec 09, 2022
An LSTM based GAN for Human motion synthesis

GAN-motion-Prediction An LSTM based GAN for motion synthesis has a few issues reading H3.6M data from A.Jain et al , will fix soon. Prediction of the

Amogh Adishesha 9 Jun 17, 2022
Code for our ACL 2021 paper - ConSERT: A Contrastive Framework for Self-Supervised Sentence Representation Transfer

ConSERT Code for our ACL 2021 paper - ConSERT: A Contrastive Framework for Self-Supervised Sentence Representation Transfer Requirements torch==1.6.0

Yan Yuanmeng 478 Dec 25, 2022
LIVECell - A large-scale dataset for label-free live cell segmentation

LIVECell dataset This document contains instructions of how to access the data associated with the submitted manuscript "LIVECell - A large-scale data

Sartorius Corporate Research 112 Jan 07, 2023
Pretrained SOTA Deep Learning models, callbacks and more for research and production with PyTorch Lightning and PyTorch

Pretrained SOTA Deep Learning models, callbacks and more for research and production with PyTorch Lightning and PyTorch

Pytorch Lightning 1.4k Jan 01, 2023
iBOT: Image BERT Pre-Training with Online Tokenizer

Image BERT Pre-Training with iBOT Official PyTorch implementation and pretrained models for paper iBOT: Image BERT Pre-Training with Online Tokenizer.

Bytedance Inc. 435 Jan 06, 2023
Code for the CVPR 2021 paper "Triple-cooperative Video Shadow Detection"

Triple-cooperative Video Shadow Detection Code and dataset for the CVPR 2021 paper "Triple-cooperative Video Shadow Detection"[arXiv link] [official l

Zhihao Chen 24 Oct 04, 2022
Composable transformations of Python+NumPy programs: differentiate, vectorize, JIT to GPU/TPU, and more

JAX: Autograd and XLA Quickstart | Transformations | Install guide | Neural net libraries | Change logs | Reference docs | Code search News: JAX tops

Google 21.3k Jan 01, 2023
Demo for Real-time RGBD-based Extended Body Pose Estimation paper

Real-time RGBD-based Extended Body Pose Estimation This repository is a real-time demo for our paper that was published at WACV 2021 conference The ou

Renat Bashirov 118 Dec 26, 2022
[NAACL & ACL 2021] SapBERT: Self-alignment pretraining for BERT.

SapBERT: Self-alignment pretraining for BERT This repo holds code for the SapBERT model presented in our NAACL 2021 paper: Self-Alignment Pretraining

Cambridge Language Technology Lab 104 Dec 07, 2022
Taichi Course Homework Template

太极图形课S1-标题部分 这个作业未来或将是你的开源项目,标题的内容可以来自作业中的核心关键词,让读者一眼看出你所完成的工作/做出的好玩demo 如果暂时未想好,起名时可以参考“太极图形课S1-xxx作业” 如下是作业(项目)展开说明的方法,可以帮大家理清思路,并且也对读者非常友好,请小伙伴们多多参

TaichiCourse 30 Nov 19, 2022
A large-scale video dataset for the training and evaluation of 3D human pose estimation models

ASPset-510 ASPset-510 (Australian Sports Pose Dataset) is a large-scale video dataset for the training and evaluation of 3D human pose estimation mode

Aiden Nibali 36 Oct 30, 2022
WSDM‘2022: Knowledge Enhanced Sports Game Summarization

Knowledge Enhanced Sports Game Summarization Cooming Soon! :) Data will be released after approval process. Code will be published once the author of

Jiaan Wang 14 Jul 13, 2022