An automated detection and classification of citrus plant diseases using image processing techniques: a review
- Zahid Iqbal,
- Muhammad Attique Khan,
- Muhammad Sharif,
- Jamal Hussain Shah,
- ,
- Kashif Javed
- COMSATS University Islamabad,
- ,
- National University of Sciences and Technology Pakistan
Research Output: Contribution to journal Article Peer-review
Abstract
The citrus plants such as lemons, mandarins, oranges, tangerines, grapefruits, and limes are commonly grown fruits all over the world. The citrus producing companies create a large amount of waste every year whereby 50% of citrus peel is destroyed every year due to different plant diseases. This paper presents a survey on the different methods relevant to citrus plants leaves diseases detection and the classification. The article presents a detailed taxonomy of citrus leaf diseases. Initially, the challenges of each step are discussed in detail, which affects the detection and classification accuracy. In addition, a thorough literature review of automated disease detection and classification methods is presented. To this end, we study different image preprocessing, segmentation, feature extraction, features selection, and classification methods. In addition, also discuss the importance of features extraction and deep learning methods. The survey presents the detailed discussion on studies, outlines their strengths and limitations, and uncovers further research issues. The survey results reveal that the adoption of automated detection and classification methods for citrus plants diseases is still in its infancy. Hence new tools are needed to fully automate the detection and classification processes.
Publication Information
Output type
Research Output: Contribution to journal Article Peer-review
Original language
EnglishPages from-to (Number of pages)
Pages 12-32Journal (Volume, Issue Number)
Computers and Electronics in Agriculture (Volume 153)Publication milestones
- Accepted/In press - 24/07/2018
- Published - 06/08/2018
Publication status
Published - 06/08/2018
ISSN
0168-1699External Publication IDs
- ORCID: /0000-0001-7428-2272/work/63090596
- Scopus: 85050968013
