Scopus Indexed Publications
Paper Details
- Title
-
Cauliflower Leaf Disease Detection Using Computerized Techniques
- Author
-
Taslima Yesmin Orin,
Mayen Uddin Mojumdar,
Shah Md. Tanvir Siddiquee,
- Email
-
- Abstract
-
Crop cultivation is an
important role in the agriculture industry. Presently, food loss is
primarily caused by sick crops, which affects growth rate and increase.
High yield depends a lot on its growth. However, now crop leaf disease
has become a significant problem in agriculture as a result of which the
quality and growth rate of yield in agriculture is declining day by
day. Through this paper, we have tried to diagnose the leaf disease of a
particular crop (cauliflower). In this study, we collected data from
each cauliflower leaf and created a dataset, and we divided our study
was split into two sections: leaf disease detection and machine learning
techniques. To detect leaf disease, we have used Matlab and various
algorithms of classic machine learning such as Nav Bayes (NB), Decision
Tree (TT), Random Forest (RF), Support Vector Machine (SVM), Secular
Minimal Optimization (SMO). For each, we determined the accuracy,
retraction, F-measurement, accuracy, and ROC values classification. This
paper describes a simple but effective technique for reviewing leaf
disease detection evidence and applying it to image processing and
computer vision.
- Keywords
-
Cauliflower , Leaf Disease , computer vision , SVM , k-Means
- Journal or Conference Name
- 2021 IEEE 6th International Conference on Computing, Communication and Automation (ICCCA)
- Publication Year
-
2021
- Indexing
-
scopus