Classification of Tobacco Leaf Pests Using VGG16 Transfer Learning

Project Code :TCMAPY407

Objective

The main of this project is to classify the disease present on the tobacco leaves by using deep learning techniques.

Abstract

Some of the tobacco leaf pest attacks were only seen after the initial fermentation process. Tobacco leaves affected by pest attacks make the quality decline. Leaves affected by pests and diseases need to be separated from healthy leaves to maintain quality. Sorting is usually done manually allowing errors due to human-errors. In this study, we tried to classify the leaves affected by several types of pest attacks automatically. Convolutional Neural Network (CNN) is one of the latest classification methods proposed in this study using the famous VGG16 architecture. VGG16 training can last a long time if trained with random initialization of weights. For this reason, we selected initial weights by transfer learning to improve accuracy and speed up training time. Based on the results of training with single class of the disease using VGG16 and transfer learning, we obtained a very high accuracy. Some scenarios are tested based on a combination of the number of learnable parameters and types of the optimizer to get the best results. The result was that the proposed architecture was proven to be able to classify all training and validation data correctly.

KEYWORDS: Tobacco Leaf Pest, VGG16, Transfer Learning.

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

Block Diagram

Specifications

SOFTWARE SPECIFICATIONS:

Technology                 : Python, Application.

Libraries                      : Pandas, Numpy, Tensorflow, OS.

Version                        : Python 3.6+

Server side scripts       : HTML, CSS, JS

Frame works               : Flask

IDE                             : Pycharm

HARDWARE SPECIFICATIONS:

RAM                           : 8GB, 64 bit os.

Processor                     : I3/Intel processor

Hard Disk Capacity    : 128 GB +

 

Learning Outcomes

  • Scope of Real Time Application Scenarios.
  • What is a search engine and how browser can work.
  • What type of technology versions are used.
  • Use of HTML, and CSS on UI Designs.
  • Data Parsing Front-End to Back-End.
  • Working Procedure.
  • Introduction to basic technologies used for.
  • How project works.
  • Input and Output modules.
  • Practical exposure to
    • Hardware and software tools.
    • Solution providing for real time problems.
    • Working with team/ individual.
    • Work on Creative ideas.
  • Frame work use.
  • About python.
  • What is deep learning?
  • Deep learning algorithms.
  • What is electronic technologies?
  • What is image recognition?
  • What is convolution neural network?.

Demo Video

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