A STUDY OF TOMATO FRUIT DISEASE DETECTION USING RGB COLOR THRESHOLDING AND K-MEANS CLUSTERING
Journal: International Journal of Computer Science and Mobile Computing - IJCSMC (Vol.10, No. 8)Publication Date: 2021-08-30
Authors : S.Lingeswari; P.M.Gomathi; S.Piramu Kailasam;
Page : 51-59
Keywords : Tomato disease; Threshold; Colorthresholding segmentation; K-means Clustering segmentation;
Abstract
The agriculture field plays vital role in development of smart India. To increase economic level the production of fruits, crops and vegetables can use CAD technique using image processing tools. Identifying diseases in fruits is an image processing's big challenging task. This can done by continuous visual photos or videos monitoring system. The automated image processing research helps to control the pesticides on fruits and vegetables. In this paper we focus to detect the diseases of tomato at earlier stage. The proposed system shows how different algorithms such as color thresholding segmentation techniques and K-means clustering are used. In proposed system shows the K-means Clustering is better than RGB color based colorthresholder method for detecting tomato diseases in beginning stage.
Other Latest Articles
- ANALYSIS OF THE NEED FOR THE DEVELOPMENT MULTI-REPRESENTATION MODULES TO FOSTER CREATIVE THINKING SKILLS OF JUNIOR HIGH SCHOOL STUDENTS DURING THE COVID-19 PANDEMIC
- IMPACT OF TRAINING ON THE AWARENESS AND KNOWLEDGE ON IMPROVED PRODUCTION TECHNOLOGIES IN RED GRAM AMONG FARMERS
- HETEROSIDASE ACTIVITIES EXTRACTED FROM THE SEEDS OF THE PITS OF SIX MANGO (MANGIFERA INDICA L) CULTIVARS
- THE SOCIAL CLASS MYTH OF COLLECTIVISM: A QUALITATIVE STUDY OF THE IMPACT OF SOCIAL CLASS ON FAMILIES MEAL INTERACTION BEHAVIOUR
- JURIDIC REVIEW ON INTEGRATED LAW ENFORCEMENT IN ENVIRONMENTAL CRIME
Last modified: 2021-08-30 22:52:10