Movatterモバイル変換


[0]ホーム

URL:


loading
PapersPapers/2022PapersPapers/2022

Scitepress Logo

The Search is performed on all of the following fields:

Note: Please use complete words only.
  • Publication Title
  • Abstract
  • Publication Keywords
  • DOI
  • Proceeding Title
  • Proceeding Foreword
  • ISBN (Completed)
  • Insticc Ontology
  • Author Affiliation
  • Author Name
  • Editor Name
If you already have a Primoris Account you can use the same username/password here.
Research.Publish.Connect.

The Search is performed on all of the following fields:

Note: Please use complete words only.
  • Publication Title
  • Abstract
  • Publication Keywords
  • DOI
  • Proceeding Title
  • Proceeding Foreword
  • ISBN (Completed)
  • Insticc Ontology
  • Author Affiliation
  • Author Name
  • Editor Name
If you're looking for an exact phrase use quotation marks on text fields.

Paper

Authors:Luigi Capogrosso;Federico Girella;Francesco Taioli;Michele Chiara;Muhammad Aqeel;Franco Fummi;Francesco Setti andMarco Cristani

Affiliation:Department of Engineering for Innovation Medicine, University of Verona, Italy

Keyword(s):Diffusion Models, Data Augmentation, Surface Defect Detection.

Abstract:In this study, we show that diffusion models can be used in industrial scenarios to improve the data augmentation procedure in the context of surface defect detection. In general, defect detection classifiers are trained on ground-truth data formed by normal samples (negative data) and samples with defects (positive data), where the latter are consistently fewer than normal samples. For these reasons, state-of-the-art data augmentation procedures add synthetic defect data by superimposing artifacts to normal samples. This leads to out-of-distribution augmented data so that the classification system learns what is not a normal sample but does not know what a defect really is. We show that diffusion models overcome this situation, providing more realistic in-distribution defects so that the model can learn the defect’s genuine appearance. We propose a novel approach for data augmentation that mixes out-of-distribution with in-distribution samples, which we call In&Out. The approach can deal with two data augmentation setups: i) when no defects are available (zero-shot data augmentation) and ii) when defects are available, which can be in a small number (few-shot) or a large one (full-shot). We focus the experimental part on the most challenging benchmark in the state-of-the-art, i.e., the Kolektor Surface-Defect Dataset 2, defining the new state-of-the-art classification AP score under weak supervision of .782. The code is available at https://github.com/intelligolabs/in and out.(More)

In this study, we show that diffusion models can be used in industrial scenarios to improve the data augmentation procedure in the context of surface defect detection. In general, defect detection classifiers are trained on ground-truth data formed by normal samples (negative data) and samples with defects (positive data), where the latter are consistently fewer than normal samples. For these reasons, state-of-the-art data augmentation procedures add synthetic defect data by superimposing artifacts to normal samples. This leads to out-of-distribution augmented data so that the classification system learns what is not a normal sample but does not know what a defect really is. We show that diffusion models overcome this situation, providing more realistic in-distribution defects so that the model can learn the defect’s genuine appearance. We propose a novel approach for data augmentation that mixes out-of-distribution with in-distribution samples, which we call In&Out. The approach can deal with two data augmentation setups: i) when no defects are available (zero-shot data augmentation) and ii) when defects are available, which can be in a small number (few-shot) or a large one (full-shot). We focus the experimental part on the most challenging benchmark in the state-of-the-art, i.e., the Kolektor Surface-Defect Dataset 2, defining the new state-of-the-art classification AP score under weak supervision of .782. The code is available at https://github.com/intelligolabs/in and out.

Full Text

Download
Please type the code

CC BY-NC-ND 4.0

Sign In

Guests can use SciTePress Digital Library without having a SciTePress account. However, guests have limited access to downloading full text versions of papers and no access to special options.
Guests can use SciTePress Digital Library without having a SciTePress account. However, guests have limited access to downloading full text versions of papers and no access to special options.
Guest:Register as new SciTePress user now for free.

Sign In

Download limit per month - 500 recent papers or 4000 papers more than 2 years old.
SciTePress user: please login.

PDF ImageMy Papers

PopUp Banner

Unable to see papers previously downloaded, because you haven't logged in as SciTePress Member.

If you are already a member please login.
You are not signed in, therefore limits apply to your IP address 153.126.140.213

In the current month:
Recent papers: 100 available of 100 total
2+ years older papers: 200 available of 200 total
Popup Banner

PDF ButtonFull Text

Download
Please type the code

Paper citation in several formats:
Capogrosso, L., Girella, F., Taioli, F., Chiara, M., Aqeel, M., Fummi, F., Setti, F. and Cristani, M. (2024).Diffusion-Based Image Generation for In-Distribution Data Augmentation in Surface Defect Detection. InProceedings of the 19th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications - Volume 2: VISAPP; ISBN 978-989-758-679-8; ISSN 2184-4321, SciTePress, pages 409-416. DOI: 10.5220/0012350400003660

@conference{visapp24,
author={Luigi Capogrosso and Federico Girella and Francesco Taioli and Michele Chiara and Muhammad Aqeel and Franco Fummi and Francesco Setti and Marco Cristani},
title={Diffusion-Based Image Generation for In-Distribution Data Augmentation in Surface Defect Detection},
booktitle={Proceedings of the 19th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications - Volume 2: VISAPP},
year={2024},
pages={409-416},
publisher={SciTePress},
organization={INSTICC},
doi={10.5220/0012350400003660},
isbn={978-989-758-679-8},
issn={2184-4321},
}

TY - CONF

JO - Proceedings of the 19th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications - Volume 2: VISAPP
TI - Diffusion-Based Image Generation for In-Distribution Data Augmentation in Surface Defect Detection
SN - 978-989-758-679-8
IS - 2184-4321
AU - Capogrosso, L.
AU - Girella, F.
AU - Taioli, F.
AU - Chiara, M.
AU - Aqeel, M.
AU - Fummi, F.
AU - Setti, F.
AU - Cristani, M.
PY - 2024
SP - 409
EP - 416
DO - 10.5220/0012350400003660
PB - SciTePress

    - Science and Technology Publications, Lda.
    RESOURCES

    Proceedings

    Papers

    Authors

    Ontology

    CONTACTS

    Science and Technology Publications, Lda
    Avenida de S. Francisco Xavier, Lote 7 Cv. C,
    2900-616 Setúbal, Portugal.

    Phone: +351 265 520 185(National fixed network call)
    Fax: +351 265 520 186
    Email:info@scitepress.org

    EXTERNAL LINKS

    PRIMORIS

    INSTICC

    SCITEVENTS

    CROSSREF

    PROCEEDINGS SUBMITTED FOR INDEXATION BY:

    dblp

    Ei Compendex

    SCOPUS

    Semantic Scholar

    Google Scholar

    Microsoft Academic


    [8]
    ページ先頭

    ©2009-2025 Movatter.jp