WIRED++WVSU Institutional Repository and Electronic Dissertation and Theses PLUS
    • English
    • Filipino
    • Deutsch
    • русский
  • English 
    • English
    • Filipino
    • Deutsch
    • русский
  • Login
View Item 
  •   WIRED++ Home
  • WVSU External Publications
  • Journal articles published externally
  • View Item
  •   WIRED++ Home
  • WVSU External Publications
  • Journal articles published externally
  • View Item
JavaScript is disabled for your browser. Some features of this site may not work without it.

Plant leaf detection and disease recognition using deep learning

Thumbnail
View/Open
PUB-JAR-M-2019-MilitanteSV-FLT.pdf (239.0Kb)
Date
2019-12
Author
Militante , Sammy V. ORCID
Gerardo, Bobby D. ORCID
Dionisio, Nanette V. ORCID
Metadata
Show full item record


Share 
 
Abstract
The latest improvements in computer vision formulated through deep learning have paved the method for how to detect and diagnose diseases in plants by using a camera to capture images as basis for recognizing several types of plant diseases. This study provides an efficient solution for detecting multiple diseases in several plant varieties. The system was designed to detect and recognize several plant varieties specifically apple, corn, grapes, potato, sugarcane, and tomato. The system can also detect several diseases of plants. Comprised of 35,000 images of healthy plant leaves and infected with the diseases, the researchers were able to train deep learning models to detect and recognize plant diseases and the absence these of diseases. The trained model has achieved an accuracy rate of 96.5% and the system was able to register up to 100% accuracy in detecting and recognizing the plant variety and the type of diseases the plant was infected.
URI
https://hdl.handle.net/20.500.14353/533
Recommended Citation
Militante, S. V., Gerardo, B. D. & Dionisio, N. V. (2019). Plant Leaf Detection and Disease Recognition using Deep Learning. In 2019 IEEE Eurasia Conference on IOT, Communication and Engineering (ECICE), Yunlin, Taiwan, 3-6, October 2019, (pp. 579-582). IEEE.
DOI
10.1109/ECICE47484.2019.8942686
Type
Conference paper
ISBN
978-1-7281-2502-2
Keywords
Convolutional neural network Deep learning method Plant disease detection Disease management Disease classification Disease identification Image-based disease Artificial neural networks
Subject
Computer vision OCLC - FAST (Faceted Application of Subject Terminology) Neural networks (Computer science) OCLC - FAST (Faceted Application of Subject Terminology) Deep learning (Machine learning) OCLC - FAST (Faceted Application of Subject Terminology) Optical character recognition devices OCLC - FAST (Faceted Application of Subject Terminology) Computers OCLC - FAST (Faceted Application of Subject Terminology) Diseases OCLC - FAST (Faceted Application of Subject Terminology) Plant diseases OCLC - FAST (Faceted Application of Subject Terminology) Plants OCLC - FAST (Faceted Application of Subject Terminology) Artificial intelligence OCLC - FAST (Faceted Application of Subject Terminology) Diagnosis OCLC - FAST (Faceted Application of Subject Terminology) Cameras OCLC - FAST (Faceted Application of Subject Terminology) Image processing OCLC - FAST (Faceted Application of Subject Terminology)
Collections
  • Journal articles published externally [120]
  • Scholarly and Creative Works of Faculty Members and Researchers [26]

Related items

Showing items related by title, author, creator and subject.

  • Thumbnail

    Cross-sectional survey on the knowledge, attitude and practice of male Filipino seafarers on sexual health. 

    Guevara, N. ORCID; Pineda, M. ORCID; Dorotan, M. ORCID; Ghimire, K.; Co, M.; Guzman, K.; Postrano, L. (Via Medica Journals, 2010)
    The Philippines is currently the world’s leading supplier of seafarers aboard foreign vessels, accounting for nearly a quarter of the world’s maritime industry. Seafarers, being mobile, have a significant contribution ...
  • Thumbnail

    TIOtropium safety and performance In Respimat® (TIOSPIRTM): analysis of asian cohort of COPD patients. 

    Zhong, Nanshan ORCID; Moon, Hwa S.; Lee, Kwan H.; Mahayiddin, Aziah A.; Boonsawat,Watchara ORCID; Isidro, Marie G.D. ORCID; Bai, Chunxue ORCID; Mueller, Achim ORCID; Metzdorf, Norbert ORCID; Anzueto, Antonio (Blackwell Publishing, 2016-08-04)
    The TIOtropium Safety and Performance In Respimat (TIOSPIR) trial showed similar safety and exacerbation efficacy profiles for tiotropium Respimat and HandiHaler in patients with COPD. The TIOSPIR results for patients in ...
  • Thumbnail

    Demographic, health and pandemic-related determinants of COVID-19 vaccination intention among Filipino emerging adults 

    Cleofas, Jerome V. ORCID; Oducado, Ryan Michael ORCID (SAGE Publishing, 2022)
    Emerging adults have become more susceptible to COVID-19 because of the emergence of the Delta and Omicron variants. Vaccination can help protect them from contracting the virus. However, in the Philippines, vaccine ...

© 2025 University Learning Resource Center | WVSU
Contact Us | Send Feedback
 

 

Browse

All of WIRED++Communities & CollectionsBy Issue DateAuthorsTitlesSubjectsThis CollectionBy Issue DateAuthorsTitlesSubjects

My Account

LoginRegister

Statistics

View Usage Statistics

© 2025 University Learning Resource Center | WVSU
Contact Us | Send Feedback
 

 

EXTERNAL LINKS DISCLAIMER

This link is being provided as a convenience and for informational purposes only. West Visayas State University bears no responsibility for the accuracy, legality or content of the external site or for that of subsequent links. Contact the external site for answers to questions regarding its content.

If you come across any external links that don't work, we would be grateful if you could report them to the repository administrators.

Click DOWNLOAD to open/view the file. Chat Graciano to inform us in case the link we provided don't work.

Download