Author:
Deng Wenzhe,Zhou Feiyang,Gong Zheng,Cui Yongjie,Liu Li,Chi Qian
Abstract
To achieve early recognition of lettuce diseases, this paper combines the technology of image processing and the classifier of support vector machine (SVM) to identify and classify two common diseases of hydroponic lettuce: leafroll and brown blotch disease (BBD). Specifically, the authors designed programs for the acquisition and preprocessing, segmentation, and feature extraction of hydroponic lettuce images, and developed an identification program for hydroponic lettuce diseases based on the SVM. On this basis, the color, shape, and texture features were extracted from these images, and adopted as the training set of the SVM. Then, the identification model for hydroponic lettuce diseases was trained with the radial kernel function as the core, and applied to identify the different types of diseases. In total, 1,800 images were selected as samples, and subjected to denoising, enhancement, segmentation, and feature extraction. The leaf features of hydroponic lettuce were extracted, and used to establish the SVM-based disease identification model. The experimental results on the test set show that the identification model could recognize 93% of hydroponic lettuce diseases, achieving an excellent identification effect.
Funder
Shaanxi Provincial Key Research and Development Project
Innovative Training Program for College Students of Northwest A&F University
National Natural Science Foundation of China
National Key Research and Development Program of China
Publisher
International Information and Engineering Technology Association
Subject
Electrical and Electronic Engineering