• Register
  • Login

International Research Journal on Advanced Science Hub

  1. Home
  2. Comparative Study of CNN Models for Defect Detection in Food Packets

Current Issue

By Issue

By Author

Author Index

Keyword Index

About Journal

News

Aims and Scope

Editorial Board

Publication Ethics

Indexing and Abstracting

Related Links

FAQ

Peer Review Process

Journal Metrics

Advertising policy

Editor and Reviewer guidelines

Digital Archiving & Preservation Policy

Copyright Terms

Licensing Terms

Editorial Process - Peer Reviewed

Comparative Study of CNN Models for Defect Detection in Food Packets

    Authors

    • Neeti Shukla 1
    • Asmita A Moghe 2

    1 Research Scholar, Department of Information Technology, University Institute of Technology, RGPV Bhopal. Madhya Pradesh, India

    2 Professor, Department of Information Technology, University Institute of Technology, RGPV Bhopal. Madhya Pradesh, India

,

Document Type : Research Article

10.47392/irjash.2023.S055
  • Article Information
  • Download
  • Export Citation
  • Statistics
  • Share

Abstract

Industry 4.0 is  the  term  which  promises  a  new  industrial  revolution.  It is an amalgamation of advanced manufacturing techniques and Internet of Things(IoT) to produce such manufacturing systems which are interconnected, and can communicate, do analysis, and utilize the information to drive fur- ther intelligent action back in the physical world. Industrial Internet of Things (IIoT) involve application of IoT in manufacturing and other industrial pro- cesses to enhancing the working condition, and improvement of operational efficiency (Foukalas et al.).
This paper reviews the recent work on industry 4.0 for automated defect detec- tion in food packaging industry. This will help to reduce the complexity and improve the speed and accuracy of detection. This paper discusses the chal- lenges and applications of industry 4.0 in general and further proposes a method to compare how various CNN models can be used for detecting the defects in food packaging industry. In this work seven (Alexnet, Resnet50, Resnet101, Densenet, VGG16, VGG19 and Squeezenet ) different convolution neural networks are subjected to detecting the defects in food packets. After running the models with a Multi-Label-Classifier the training accuracy after 100 epochs is found as 98.5% and Validation Accuracy as 98.4%.

Keywords

  • Industry 40
  • CNN
  • Alexnet
  • Resnet50
  • Resnet101
  • Densenet
  • VGG16
  • VGG19
  • Squeezenet
  • XML
  • PDF 2.22 M
  • RIS
  • EndNote
  • Mendeley
  • BibTeX
  • APA
  • MLA
  • HARVARD
  • CHICAGO
  • VANCOUVER
    • Article View: 204
    • PDF Download: 99
International Research Journal on Advanced Science Hub
Volume 5, Issue 05S - Issue Serial Number 5
May 2023
Page 404-412
Files
  • XML
  • PDF 2.22 M
History
  • Receive Date: 28 February 2023
  • Revise Date: 12 March 2023
  • Accept Date: 20 March 2023
Share
Export Citation
  • RIS
  • EndNote
  • Mendeley
  • BibTeX
  • APA
  • MLA
  • HARVARD
  • CHICAGO
  • VANCOUVER
Statistics
  • Article View: 204
  • PDF Download: 99

APA

Shukla, N. and Moghe, A. A. (2023). Comparative Study of CNN Models for Defect Detection in Food Packets. International Research Journal on Advanced Science Hub, 5(Issue 05S), 404-412. doi: 10.47392/irjash.2023.S055

MLA

Shukla, N. , and Moghe, A. A. . "Comparative Study of CNN Models for Defect Detection in Food Packets", International Research Journal on Advanced Science Hub, 5, Issue 05S, 2023, 404-412. doi: 10.47392/irjash.2023.S055

HARVARD

Shukla, N., Moghe, A. A. (2023). 'Comparative Study of CNN Models for Defect Detection in Food Packets', International Research Journal on Advanced Science Hub, 5(Issue 05S), pp. 404-412. doi: 10.47392/irjash.2023.S055

CHICAGO

N. Shukla and A. A. Moghe, "Comparative Study of CNN Models for Defect Detection in Food Packets," International Research Journal on Advanced Science Hub, 5 Issue 05S (2023): 404-412, doi: 10.47392/irjash.2023.S055

VANCOUVER

Shukla, N., Moghe, A. A. Comparative Study of CNN Models for Defect Detection in Food Packets. International Research Journal on Advanced Science Hub, 2023; 5(Issue 05S): 404-412. doi: 10.47392/irjash.2023.S055

  • Home
  • About Journal
  • Editorial Board
  • Submit Manuscript
  • Contact Us
  • Sitemap

News

  • Career at RSP SCIENCE HUB 2024-05-03

Newsletter Subscription

Subscribe to the journal newsletter and receive the latest news and updates

© Journal Management System. Powered by iJournalPro.com