Plant Disease Detection using Deep Learning in Banana and Sunflower

Authors

  • Chetan H R Research Scholar, Dept of ECE, Srinivasa University, Mukka Mangalore, India-Dept. of EEE, Jain Institute of Technology, Davangere-577003, Karnataka, India.
  • Rajanna G S Professor, Dept of ECE, Srinivasa University, Mukka, Mangalore, India
  • Sreenivasa BR Associate Professor, Dept, of ISE, BIET, Davangere, India.
  • Ganesh N Yallappa Assistant Professor, Dept. of Medicinal Chemistry, Jain Institute of Technology, Davangere-577003, Karnataka, India.

DOI:

https://doi.org/10.17762/jaz.v44i3.369

Abstract

In recent years plant disease detection and classification is finding a lot of scope in the field of agriculture. The use of image pre-processing along with deep learning techniques is making the role of farmers easy in the process of plant leaf disease detection. In this paper we propose a deep learning technique, ResNet-50 for the identification and classification of leaf diseases mainly in banana and sunflower. Images for the training and testing purpose are collected by visiting the farms and from village dataset for normal, leaf spot, leaf blight, powdery mildew, bunchy top, sigatoka, panama wilt. Pre-processing is done to remove eliminate the noise in the image by converting the RGB input to HSV image. Binary pictures are retrieved to separate the diseased and unaffected portions based on the hue and saturation components. A clustering method is utilized to separate the diseased region from the normal portion and the background. Classification of the disease is carried out using ResNet-50 algorithm. The experimental results obtained are compared with CNN, machine learning algorithms like SVM, KNN, DT and Ensemble algorithm like RF and XG booster. The proposed algorithm provided maximum efficiency compared to other algorithms.

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Published

2023-10-09

Issue

Section

Articles