News Updates Thursday 26th Dec 2024 :
  • Welcome to INPRESSCO, world's leading publishers, We have served more than 10000+ authors
  • Articles are invited in engineering, science, technology, management, industrial engg, biotechnology etc.
  • Paper submission is open. Submit online or at editor.ijcet@inpressco.com
  • Our journals are indexed in NAAS, University of Regensburg Germany, Google Scholar, Cross Ref etc.
  • DOI is given to all articles

Plant Disease Detection using Image processing and Machine learning Techniques


Author : Mr. Jamil Ahemad Abdul Hafiz Shaikh

Pages : 746-749
Download PDF
Abstract

The prevention and control in plant disease plays vital role in architectural filed.  Accurate and rapid diagnostic of disease helps to control the disease at early stage. The detection of plant disease using automatic technique is beneficial and reduces large work of monitoring each individual plant in the farm. A combined usage of image processing techniques and machine learning techniques helps to recognize the disease. In the proposed system, plant leaf image features are extracted using Gabor filter and watershed segmentation algorithm which includes the color, texture and intensity property of image. Based on the extracted features the image is compared with existing disease training data. The test image is labeled with the related disease using classification technique. The proposed study focuses on the comparative analysis using various classification techniques analysis in disease detection.

Keywords: Image Processing, Machine learning, Plant Disease,  Naive Bays, SVM, Random Forest

Call for Papers
  1. IJCET- Current Issue
  2. Issues are published in Feb, April, June, Aug, Oct and Dec
  3. DOI is given to all articles
  • Inpressco Google Scholar
  • Inpressco Science Central
  • Inpressco Global impact factor
  • Inpressco aap

International Press corporation is licensed under a Creative Commons Attribution-Non Commercial NoDerivs 3.0 Unported License
©2010-2023 INPRESSCO® All Rights Reserved