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
A DeepStack custom model for detecting common objects in dark/night images and videos.

DeepStack_ExDark This repository provides a custom DeepStack model that has been trained and can be used for creating a new object detection API for d

MOSES OLAFENWA 98 Dec 24, 2022
Code for ECCV 2020 paper "Contacts and Human Dynamics from Monocular Video".

Contact and Human Dynamics from Monocular Video This is the official implementation for the ECCV 2020 spotlight paper by Davis Rempe, Leonidas J. Guib

Davis Rempe 207 Jan 05, 2023
A collection of inference modules for fastai2

fastinference A collection of inference modules for fastai including inference speedup and interpretability Install pip install fastinference There ar

Zachary Mueller 83 Oct 10, 2022
Repo for paper "Dynamic Placement of Rapidly Deployable Mobile Sensor Robots Using Machine Learning and Expected Value of Information"

Repo for paper "Dynamic Placement of Rapidly Deployable Mobile Sensor Robots Using Machine Learning and Expected Value of Information" Notes I probabl

Berkeley Expert System Technologies Lab 0 Jul 01, 2021
AugMix: A Simple Data Processing Method to Improve Robustness and Uncertainty

AugMix Introduction We propose AugMix, a data processing technique that mixes augmented images and enforces consistent embeddings of the augmented ima

Google Research 876 Dec 17, 2022
Hyperbolic Procrustes Analysis Using Riemannian Geometry

Hyperbolic Procrustes Analysis Using Riemannian Geometry The code in this repository creates the figures presented in this article: Please notice that

Ronen Talmon's Lab 2 Jan 08, 2023
Oriented Response Networks, in CVPR 2017

Oriented Response Networks [Home] [Project] [Paper] [Supp] [Poster] Torch Implementation The torch branch contains: the official torch implementation

ZhouYanzhao 217 Dec 12, 2022
Official code repository for A Simple Long-Tailed Rocognition Baseline via Vision-Language Model.

BALLAD This is the official code repository for A Simple Long-Tailed Rocognition Baseline via Vision-Language Model. Requirements Python3 Pytorch(1.7.

peng gao 42 Nov 26, 2022
An interpreter for RASP as described in the ICML 2021 paper "Thinking Like Transformers"

RASP Setup Mac or Linux Run ./setup.sh . It will create a python3 virtual environment and install the dependencies for RASP. It will also try to insta

141 Jan 03, 2023
Implementation of BI-RADS-BERT & The Advantages of Section Tokenization.

BI-RADS BERT Implementation of BI-RADS-BERT & The Advantages of Section Tokenization. This implementation could be used on other radiology in house co

1 May 17, 2022
DeLag: Detecting Latency Degradation Patterns in Service-based Systems

DeLag: Detecting Latency Degradation Patterns in Service-based Systems Replication package of the work "DeLag: Detecting Latency Degradation Patterns

SEALABQualityGroup @ University of L'Aquila 2 Mar 24, 2022
Custom studies about block sparse attention.

Block Sparse Attention 研究总结 本人近半年来对Block Sparse Attention(块稀疏注意力)的研究总结(持续更新中)。按时间顺序,主要分为如下三部分: PyTorch 自定义 CUDA 算子——以矩阵乘法为例 基于 Triton 的 Block Sparse A

Chen Kai 2 Jan 09, 2022
TCNN Temporal convolutional neural network for real-time speech enhancement in the time domain

TCNN Pandey A, Wang D L. TCNN: Temporal convolutional neural network for real-time speech enhancement in the time domain[C]//ICASSP 2019-2019 IEEE Int

凌逆战 16 Dec 30, 2022
EMNLP 2021 Adapting Language Models for Zero-shot Learning by Meta-tuning on Dataset and Prompt Collections

Adapting Language Models for Zero-shot Learning by Meta-tuning on Dataset and Prompt Collections Ruiqi Zhong, Kristy Lee*, Zheng Zhang*, Dan Klein EMN

Ruiqi Zhong 42 Nov 03, 2022
Official Implementation of "Learning Disentangled Behavior Embeddings"

DBE: Disentangled-Behavior-Embedding Official implementation of Learning Disentangled Behavior Embeddings (NeurIPS 2021). Environment requirement The

Mishne Lab 12 Sep 28, 2022
Official PyTorch implemention of our paper "Learning to Rectify for Robust Learning with Noisy Labels".

WarPI The official PyTorch implemention of our paper "Learning to Rectify for Robust Learning with Noisy Labels". Run python main.py --corruption_type

Haoliang Sun 3 Sep 03, 2022
iPOKE: Poking a Still Image for Controlled Stochastic Video Synthesis

iPOKE: Poking a Still Image for Controlled Stochastic Video Synthesis iPOKE: Poking a Still Image for Controlled Stochastic Video Synthesis Andreas Bl

CompVis Heidelberg 36 Dec 25, 2022
Official PyTorch implementation of "Improving Face Recognition with Large AgeGaps by Learning to Distinguish Children" (BMVC 2021)

Inter-Prototype (BMVC 2021): Official Project Webpage This repository provides the official PyTorch implementation of the following paper: Improving F

Jungsoo Lee 16 Jun 30, 2022
A standard framework for modelling Deep Learning Models for tabular data

PyTorch Tabular aims to make Deep Learning with Tabular data easy and accessible to real-world cases and research alike.

801 Jan 08, 2023
In this work, we will implement some basic but important algorithm of machine learning step by step.

WoRkS continued English 中文 Français Probability Density Estimation-Non-Parametric Methods(概率密度估计-非参数方法) 1. Kernel / k-Nearest Neighborhood Density Est

liziyu0104 1 Dec 30, 2021