Academic Journals Database
Disseminating quality controlled scientific knowledge

A HYBRID INTELLIGENT SYSTEM FOR AUTOMATED POMEGRANATE DISEASE DETECTION AND GRADING

ADD TO MY LIST
 
Author(s): SANNAKKI SS, RAJPUROHIT VS, NARGUND VB, ARUN KUMAR R AND YALLUR PS

Journal: International Journal of Machine Intelligence
ISSN 0975-2927

Volume: 3;
Issue: 2;
Start page: 36;
Date: 2011;
VIEW PDF   PDF DOWNLOAD PDF   Download PDF Original page

Keywords: Image processing | soft computing | machine learning | disease classification | disease grading

ABSTRACT
This paper proposes an image processing methodology to address one of the core issues of plantpathology i.e. disease identification and its grading. The proposed system is an efficient module that identifiesvarious diseases of pomegranate plant and also determines the stage in which the disease is. The systememploys various image processing and machine learning techniques. At first, the captured images areprocessed for enhancement. Then image segmentation is carried out to get target regions (disease spots).Later, image features such as shape, color and texture are extracted for the disease spots. These resultantfeatures are then given as input to disease classifier to appropriately identify and grade the diseases. Finally,based on the stage of the disease, the treatment advisory module can be prepared by seeking agriculturalexperts, there by helping the farmers.
Save time & money - Smart Internet Solutions     

Tango Jona
Tangokurs Rapperswil-Jona