Machine Learning Algorithm based Disease Detection in Tomato with Automated Image Telemetry for Vertical Farming

Md Sadik Tasrif Anubhove, N. Ashrafi, A. M. Saleque, Morsheda Akter, Shadman Uddin Saif
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引用次数: 6

Abstract

This paper is highlighting an outline of disease detection in tomato using computer vision and machine learning algorithms. Readily available hardware is used to build a system where a camera mounted system can detect and identify spot disease in tomatoes in real-time. As an initial prototype only spot disease can be detected. The complete development can be divided into two parts. The first part is the software and algorithm which aimed to detect and identify disease in crops and generate a report for the user. It is successful in building the algorithm and GUI (graphical user interface) for the user which can detect spot disease in tomatoes. Using the Viola-Jones algorithm and Haar like feature extraction method for the machine learning process in MATLAB, an XML (an image trained file) file for spot disease in tomatoes is designed using 377 images of infected tomatoes. The second part is the hardware implementation which consists of a simple robot rig that carries the camera and the system scans the tomatoes for the disease. For the vast majority of the time, spot detection is accurate. Many other diseases which exist for the animal, human and crops can easily be added to the system. In terms of reliability, the system is a success with acceptable false positives.
基于机器学习算法的垂直种植番茄病害检测与自动图像遥测
本文重点介绍了利用计算机视觉和机器学习算法检测番茄病害的概况。使用现成的硬件来构建一个系统,其中安装有摄像头的系统可以实时检测和识别番茄的斑点病。作为最初的原型,只能检测到斑点病。完整的开发可以分为两个部分。第一部分是软件和算法,旨在检测和识别作物的疾病,并为用户生成报告。成功地为用户构建了能够检测番茄斑病的算法和GUI(图形用户界面)。利用MATLAB中机器学习过程的Viola-Jones算法和Haar样特征提取方法,利用377张受感染番茄的图像,设计了番茄斑病的XML(图像训练文件)文件。第二部分是硬件实现,包括一个简单的机器人装置,它携带摄像机和系统扫描西红柿的疾病。在绝大多数情况下,斑点检测是准确的。存在于动物、人类和作物的许多其他疾病很容易被添加到该系统中。在可靠性方面,该系统在可接受的误报情况下是成功的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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