Potato Leaf Disease Classification Using CNN

Project Code :TCMAPY1114

Objective

Plant leaves play an important role to monitor the health condition of the plant. The aim of this research is to build up a system that is able to find out and recognize the type of infection of plant leaf disease, based on a convolutional neural network.

Abstract

Potatoes are a well-known vegetable to all of us. Potato cultivation has been very popular in India form the last few decades. But potato production is being hampered due to diseases like early blight and late blight which are increasing the cost of production. The aim here is to build an automated and rapid disease detection process to increase potato production and digitize the system. Our main goal is to diagnose potato disease using leaf pictures that we are going to do through CNN algorithm. This paper offers a picture that is processing, and machine learning based automated systems potato leaf diseases will be detected and classified. Image processing is the best option for detecting and analyzing these diseases. In this analysis, picture division is done; more than 2000 pictures of healthy and unhealthy potato's leaf, which are collected from Kaggle, and a few pre-prepared models are utilized for acknowledgment and characterization of healthy and diseased leaves. Among them, the program predicts with an accuracy of 91.41% in testing with 30% test data and 70% train data. Our output has shown that CNN exceeds all existing tasks in potato disease detection.

KEYWORDS: CNN, potato leaf disease dataset

NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

Block Diagram

Specifications

Hardware Requirements

Processor           - I3/Intel Processor

Hard Disk                                 - 160GB

Keyboard                                 - Standard Windows Keyboard

Mouse                                      - Two or Three Button Mouse

Monitor                                    - SVGA

RAM                                          - 8GB 


Software Requirements:

Operating System                    :  Windows 7/8/10

Server-side Script                     :  HTML, CSS, Bootstrap & JS

Programming Language         :  Python

Libraries                                     :  Flask, Pandas, Mysql. Connector, Os, Smtplib, Numpy

IDE/Workbench                        :  PyCharm

Technology                               :  Python 3.6+

Server Deployment                 :  Xampp Server

Database                                   :  MySQL

Demo Video