Uncertainty Estimation via Response Scaling for Pseudo-mask Noise Mitigation in Weakly-supervised Semantic Segmentation

Related tags

Deep LearningURN
Overview

Uncertainty Estimation via Response Scaling for Pseudo-mask Noise Mitigation in Weakly-supervised Semantic Segmentation

Introduction

This is a PyTorch implementation of Uncertainty Estimation via Response Scaling for Pseudo-mask Noise Mitigation in Weakly-supervised Semantic Segmentation (AAAI2022), based on mmsegmentation. Please refer the classification phase to PMM and refer the segmentation phase to WSSS_MMSeg.

In this papper, we mitigate the noise of pseudo-mask in segmentation phase via uncertainty from response scaling which simulates the behavior of noise. This technique is applicable to all weakly-supervised semantic segmentation methods based on fully-supervised semantic segmentation.

Uncertainty visualization uncertainty visualization

Framework visualization framework visualization

Preparation

(Extract code of BaiduYun: mtci)

Datasets and pretrained weights

VOC12 OneDrive, BaiduYun; COCO14 BaiduYun; Pretrained weights OneDrive, BaiduYun

Pseduo-masks from classification phase

Pseudo-masks (if you want to skip cls phase), VOC12 OneDrive, COCO14 BaiduYun

Intermediate segmentation weights for uncertainty and cyclic pseudo-mask

Intermediate weights (if you want to skip first segmentation), BaiduYun

Released segmentation weights for test and visualization

Released weights, BaiduYun

Once downloaded, execute the following commands to link the datasets and weights.

git clone https://github.com/XMed-Lab/URN.git
cd URN
mkdir data
cd  data
ln -s [path to model files] models
ln -s [path to voc12] voc12
ln -s [path to coco2014] coco2014
ln -s [path to your voc pseudo-mask] voc12/VOC2012/ppmg
ln -s [path to your coco pseudo-mask] coco2014/voc_format/ppmg

Run the code

(If you don't run on server cluster based on srun, please modify the scripts "tools/dist_*.sh" refer to given scripts "tools/srun_*.sh")

Installation
cd URN
pip install mmcv==1.1.5
pip install -e .

(If you meet installation problems, please refer to mmsegmentation)

Train segmentation for the first time (you can skip it by intermediate weights)
cd URN
bash tools/slurm_train.sh [cluster partition] python configs/pspnet_wsss/pspnet_res2net_20k_voc12aug_pus.py work_dirs/voc12_r2n_pus 8
Uncertainty estimation and generate cyclic pseudo-mask
bash tools/slurm_test.sh [cluster partition] python configs/pspnet_wsss/pspnet_res2net_20k_voc12aug_uncertainty.py [intermediate weights] 8
Train segmentation with reweight strategy
bash tools/slurm_train.sh [cluster partition] python configs/pspnet_wsss/pspnet_res2net_20k_voc12aug_urn.py work_dirs/voc12_r2n_urn 8
Notes:
  1. We provide other backbones, including ResNet101, ScaleNet101, Wide-ResNet38
  2. Configs of COCO14 are provided in "configs/pspnet_wsss"
  3. It's suggested to use multiple cluster nodes to accelerate the genetation of pseudo-mask when use "tools/slurm_test.sh"
  4. Run "tools/run_pmm.sh" to get baselines of PMM

License

Please refer to: LICENSE.

Owner
XMed-Lab
Medical AI and Computer Vision Group, HKUST
XMed-Lab
Accompanying code for the paper "A Kernel Test for Causal Association via Noise Contrastive Backdoor Adjustment".

#backdoor-HSIC (bd_HSIC) Accompanying code for the paper "A Kernel Test for Causal Association via Noise Contrastive Backdoor Adjustment". To generate

Robert Hu 0 Nov 25, 2021
Smart edu-autobooking - Johnson @ DMI-UNICT study room self-booking system

smart_edu-autobooking Sistema di autoprenotazione per l'aula studio [email protected]

Davide Carnemolla 17 Jun 20, 2022
[CVPR 2021] Anycost GANs for Interactive Image Synthesis and Editing

Anycost GAN video | paper | website Anycost GANs for Interactive Image Synthesis and Editing Ji Lin, Richard Zhang, Frieder Ganz, Song Han, Jun-Yan Zh

MIT HAN Lab 726 Dec 28, 2022
An Object Oriented Programming (OOP) interface for Ontology Web language (OWL) ontologies.

Enabling a developer to use Ontology Web Language (OWL) along with its reasoning capabilities in an Object Oriented Programming (OOP) paradigm, by pro

TheEngineRoom-UniGe 7 Sep 23, 2022
Faster RCNN with PyTorch

Faster RCNN with PyTorch Note: I re-implemented faster rcnn in this project when I started learning PyTorch. Then I use PyTorch in all of my projects.

Long Chen 1.6k Dec 23, 2022
Implementation of CVAE. Trained CVAE on faces from UTKFace Dataset to produce synthetic faces with a given degree of happiness/smileyness.

Conditional Smiles! (SmileCVAE) About Implementation of AE, VAE and CVAE. Trained CVAE on faces from UTKFace Dataset. Using an encoding of the Smile-s

Raúl Ortega 3 Jan 09, 2022
Official implementation for Multi-Modal Interaction Graph Convolutional Network for Temporal Language Localization in Videos

Multi-modal Interaction Graph Convolutioal Network for Temporal Language Localization in Videos Official implementation for Multi-Modal Interaction Gr

Zongmeng Zhang 15 Oct 18, 2022
Official PyTorch implementation for paper Context Matters: Graph-based Self-supervised Representation Learning for Medical Images

Context Matters: Graph-based Self-supervised Representation Learning for Medical Images Official PyTorch implementation for paper Context Matters: Gra

49 Nov 23, 2022
Temporal Knowledge Graph Reasoning Triggered by Memories

MTDM Temporal Knowledge Graph Reasoning Triggered by Memories To alleviate the time dependence, we propose a memory-triggered decision-making (MTDM) n

4 Sep 25, 2022
Sibur challange 2021 competition - 6 place

sibur challange 2021 Решение на 6 место: https://sibur.ai-community.com/competitions/5/tasks/13 Скор 1.4066/1.4159 public/private. Архитектура - однос

Ivan 5 Jan 11, 2022
Train a state-of-the-art yolov3 object detector from scratch!

TrainYourOwnYOLO: Building a Custom Object Detector from Scratch This repo let's you train a custom image detector using the state-of-the-art YOLOv3 c

AntonMu 616 Jan 08, 2023
Lightweight, Portable, Flexible Distributed/Mobile Deep Learning with Dynamic, Mutation-aware Dataflow Dep Scheduler; for Python, R, Julia, Scala, Go, Javascript and more

Apache MXNet (incubating) for Deep Learning Apache MXNet is a deep learning framework designed for both efficiency and flexibility. It allows you to m

The Apache Software Foundation 20.2k Jan 08, 2023
Code for paper: Group-CAM: Group Score-Weighted Visual Explanations for Deep Convolutional Networks

Group-CAM By Zhang, Qinglong and Rao, Lu and Yang, Yubin [State Key Laboratory for Novel Software Technology at Nanjing University] This repo is the o

zhql 98 Nov 16, 2022
Newt - a Gaussian process library in JAX.

Newt __ \/_ (' \`\ _\, \ \\/ /`\/\ \\ \ \\

AaltoML 0 Nov 02, 2021
Official repository for the paper "Can You Learn an Algorithm? Generalizing from Easy to Hard Problems with Recurrent Networks"

Easy-To-Hard The official repository for the paper "Can You Learn an Algorithm? Generalizing from Easy to Hard Problems with Recurrent Networks". Gett

Avi Schwarzschild 52 Sep 08, 2022
Resources for our AAAI 2022 paper: "LOREN: Logic-Regularized Reasoning for Interpretable Fact Verification".

LOREN Resources for our AAAI 2022 paper (pre-print): "LOREN: Logic-Regularized Reasoning for Interpretable Fact Verification". DEMO System Check out o

Jiangjie Chen 37 Dec 27, 2022
Real time sign language recognition

The proposed work aims at converting american sign language gestures into English that can be understood by everyone in real time.

Mohit Kaushik 6 Jun 13, 2022
A Broader Picture of Random-walk Based Graph Embedding

Random-walk Embedding Framework This repository is a reference implementation of the random-walk embedding framework as described in the paper: A Broa

Zexi Huang 23 Dec 13, 2022
ElegantRL is featured with lightweight, efficient and stable, for researchers and practitioners.

Lightweight, efficient and stable implementations of deep reinforcement learning algorithms using PyTorch. 🔥

AI4Finance 2.5k Jan 08, 2023
Hardware accelerated, batchable and differentiable optimizers in JAX.

JAXopt Installation | Examples | References Hardware accelerated (GPU/TPU), batchable and differentiable optimizers in JAX. Installation JAXopt can be

Google 621 Jan 08, 2023