Official PyTorch implementation for "Mixed supervision for surface-defect detection: from weakly to fully supervised learning"

Overview

Mixed supervision for surface-defect detection: from weakly to fully supervised learning [Computers in Industry 2021]

Official PyTorch implementation for "Mixed supervision for surface-defect detection: from weakly to fully supervised learning" published in journal Computers in Industry 2021.

The same code is also an offical implementation of the method used in "End-to-end training of a two-stage neural network for defect detection" published in International Conference on Pattern Recognition 2020.

Citation

Please cite our Computers in Industry 2021 paper when using this code:

@article{Bozic2021COMIND,
  author = {Bo{\v{z}}i{\v{c}}, Jakob and Tabernik, Domen and 
  Sko{\v{c}}aj, Danijel},
  journal = {Computers in Industry},
  title = {{Mixed supervision for surface-defect detection: from weakly to fully supervised learning}},
  year = {2021}
}

How to run:

Requirements

Code has been tested to work on:

  • Python 3.8
  • PyTorch 1.6, 1.8
  • CUDA 10.0, 10.1
  • using additional packages as listed in requirements.txt

Datasets

You will need to download the datasets yourself. For DAGM and Severstal Steel Defect Dataset you will also need a Kaggle account.

  • DAGM available here.
  • KolektorSDD available here.
  • KolektorSDD2 available here.
  • Severstal Steel Defect Dataset available here.

For details about data structure refer to README.md in datasets folder.

Cross-validation splits, train/test splits and weakly/fully labeled splits for all datasets are located in splits directory of this repository, alongside the instructions on how to use them.

Using on other data

Refer to README.md in datasets for instructions on how to use the method on other datasets.

Demo - fully supervised learning

To run fully supervised learning and evaluation on all four datasets run:

./DEMO.sh
# or by specifying multiple GPU ids 
./DEMO.sh 0 1 2

Results will be written to ./results folder.

Replicating paper results

To replicate the results published in the paper run:

./EXPERIMENTS_COMIND.sh
# or by specifying multiple GPU ids 
./EXPERIMENTS_COMIND.sh 0 1 2

To replicate the results from ICPR 2020 paper:

@misc{Bozic2020ICPR,
    title={End-to-end training of a two-stage neural network for defect detection},
    author={Jakob Božič and Domen Tabernik and Danijel Skočaj},
    year={2020},
    eprint={2007.07676},
    archivePrefix={arXiv},
    primaryClass={cs.CV}
}

run:

./EXPERIMENTS_ICPR.sh
# or by specifying multiple GPU ids 
./EXPERIMENTS_ICPR.sh 0 1 2

Results will be written to ./results-comind and ./results-icpr folders.

Usage of training/evaluation code

The following python files are used to train/evaluate the model:

  • train_net.py Main entry for training and evaluation
  • models.py Model file for network
  • data/dataset_catalog.py Contains currently supported datasets

In order to train and evaluate a network you can also use EXPERIMENTS_ROOT.sh, which contains several functions that will make training and evaluation easier for you. For more details see the file EXPERIMENTS_ROOT.sh.

Running code

Simplest way to train and evaluate a network is to use EXPERIMENTS_ROOT.sh, you can see examples of use in EXPERIMENTS_ICPR.sh and in EXPERIMENTS_COMIND.sh

If you wish to do it the other way you can do it by running train_net.py and passing the parameters as keyword arguments. Bellow is an example of how to train a model for a single fold of KSDD dataset.

python -u train_net.py  \
    --GPU=0 \
    --DATASET=KSDD \
    --RUN_NAME=RUN_NAME \
    --DATASET_PATH=/path/to/dataset \
    --RESULTS_PATH=/path/to/save/results \
    --SAVE_IMAGES=True \
    --DILATE=7 \
    --EPOCHS=50 \
    --LEARNING_RATE=1.0 \
    --DELTA_CLS_LOSS=0.01 \
    --BATCH_SIZE=1 \
    --WEIGHTED_SEG_LOSS=True \
    --WEIGHTED_SEG_LOSS_P=2 \
    --WEIGHTED_SEG_LOSS_MAX=1 \
    --DYN_BALANCED_LOSS=True \
    --GRADIENT_ADJUSTMENT=True \
    --FREQUENCY_SAMPLING=True \
    --TRAIN_NUM=33 \
    --NUM_SEGMENTED=33 \
    --FOLD=0

Some of the datasets do not require you to specify --TRAIN_NUM or --FOLD- After training, each model is also evaluated.

For KSDD you need to combine the results of evaluation from all three folds, you can do this by using join_folds_results.py:

python -u join_folds_results.py \
    --RUN_NAME=SAMPLE_RUN \
    --RESULTS_PATH=/path/to/save/results \
    --DATASET=KSDD 

You can use read_results.py to generate a table of results f0r all runs for selected dataset.
Note: The model is sensitive to random initialization and data shuffles during the training and will lead to different performance with different runs unless --REPRODUCIBLE_RUN is set.

Owner
ViCoS Lab
ViCoS Lab
governance proposal to make fei redeemable for eth

Feil Proposal 🌲 Abstract Migrate all ETH from Fei protocol-controlled value into Yearn ETH Vault. Allow redemptions of outstanding FEI for yvETH. At

13 Mar 31, 2022
Generate text images for training deep learning ocr model

New version release:https://github.com/oh-my-ocr/text_renderer Text Renderer Generate text images for training deep learning OCR model (e.g. CRNN). Su

Qing 1.2k Jan 04, 2023
The code for CVPR2022 paper "Likert Scoring with Grade Decoupling for Long-term Action Assessment".

Likert Scoring with Grade Decoupling for Long-term Action Assessment This is the code for CVPR2022 paper "Likert Scoring with Grade Decoupling for Lon

10 Oct 21, 2022
Python bindings for JIGSAW: a Delaunay-based unstructured mesh generator.

JIGSAW: An unstructured mesh generator JIGSAW is an unstructured mesh generator and tessellation library; designed to generate high-quality triangulat

Darren Engwirda 26 Dec 13, 2022
Ddddocr - 通用验证码识别OCR pypi版

带带弟弟OCR通用验证码识别SDK免费开源版 今天ddddocr又更新啦! 当前版本为1.3.1 想必很多做验证码的新手,一定头疼碰到点选类型的图像,做样本费时

Sml2h3 4.4k Dec 31, 2022
This repo contains a script that allows us to find range of colors in images using openCV, and then convert them into geo vectors.

Vectorizing color range This repo contains a script that allows us to find range of colors in images using openCV, and then convert them into geo vect

Development Seed 9 Jul 27, 2022
color detection using python

colordetection color detection using python In this color detection Python project, we are going to build an application through which you can automat

Ruchith Kumar 1 Nov 04, 2021
[EMNLP 2021] Improving and Simplifying Pattern Exploiting Training

ADAPET This repository contains the official code for the paper: "Improving and Simplifying Pattern Exploiting Training". The model improves and simpl

Rakesh R Menon 138 Dec 26, 2022
Extracting Tables from Document Images using a Multi-stage Pipeline for Table Detection and Table Structure Recognition:

Multi-Type-TD-TSR Check it out on Source Code of our Paper: Multi-Type-TD-TSR Extracting Tables from Document Images using a Multi-stage Pipeline for

Pascal Fischer 178 Dec 27, 2022
Memory tests solver with using OpenCV

Human Benchmark project This project is OpenCV based programs which are puzzle solvers for 7 different games for https://humanbenchmark.com/. made as

Bahadır Araz 24 Dec 27, 2022
Repository collecting all the submodules for the new PyTorch-based OCR System.

OCRopus3 is being replaced by OCRopus4, which is a rewrite using PyTorch 1.7; release should be soonish. Please check github.com/tmbdev/ocropus for up

NVIDIA Research Projects 138 Dec 09, 2022
1st place solution for SIIM-FISABIO-RSNA COVID-19 Detection Challenge

SIIM-COVID19-Detection Source code of the 1st place solution for SIIM-FISABIO-RSNA COVID-19 Detection Challenge. 1.INSTALLATION Ubuntu 18.04.5 LTS CUD

Nguyen Ba Dung 170 Dec 21, 2022
SRA's seminar on Introduction to Computer Vision Fundamentals

Introduction to Computer Vision This repository includes basics to : Python Numpy: A python library Git Computer Vision. The aim of this repository is

Society of Robotics and Automation 147 Dec 04, 2022
Fast image augmentation library and easy to use wrapper around other libraries. Documentation: https://albumentations.ai/docs/ Paper about library: https://www.mdpi.com/2078-2489/11/2/125

Albumentations Albumentations is a Python library for image augmentation. Image augmentation is used in deep learning and computer vision tasks to inc

11.4k Jan 02, 2023
A python scripts that uses 3 different feature extraction methods such as SIFT, SURF and ORB to find a book in a video clip and project trailer of a movie based on that book, on to it.

A python scripts that uses 3 different feature extraction methods such as SIFT, SURF and ORB to find a book in a video clip and project trailer of a movie based on that book, on to it.

tooraj taraz 3 Feb 10, 2022
POT : Python Optimal Transport

This open source Python library provide several solvers for optimization problems related to Optimal Transport for signal, image processing and machine learning.

Python Optimal Transport 1.7k Jan 04, 2023
Deskew is a command line tool for deskewing scanned text documents. It uses Hough transform to detect "text lines" in the image. As an output, you get an image rotated so that the lines are horizontal.

Deskew by Marek Mauder https://galfar.vevb.net/deskew https://github.com/galfar/deskew v1.30 2019-06-07 Overview Deskew is a command line tool for des

Marek Mauder 127 Dec 03, 2022
a deep learning model for page layout analysis / segmentation.

OCR Segmentation a deep learning model for page layout analysis / segmentation. dependencies tensorflow1.8 python3 dataset: uw3-framed-lines-degraded-

99 Dec 12, 2022
Play the Namibian game of Owela against a terrible AI. Built using Django and htmx.

Owela Club A Django project for playing the Namibian game of Owela against a dumb AI. Built following the rules described on the Mancala World wiki pa

Adam Johnson 18 Jun 01, 2022

Installations for running keras-theano on GPU Upgrade pip and install opencv2 cd ~ pip install --upgrade pip pip install opencv-python Upgrade keras

Berat Kurar Barakat 14 Sep 30, 2022