A Model for Prediction of Paddy Crop Disease Using CNN

Project Code :TCMAPY409

Objective

In this application, we create a deep learning architecture to identify and detect the paddy plantation based diseases.

Abstract

Agriculture is the spinal cord of the human society because it is an essential need of every organism that exists in this planet. Paddy cultivation is very significant so far as humans are concerned, especially in the Asian subcontinent. Since human beings are considered as one of the most intelligent species, it is necessary for us to protect the importance and productivity of agriculture. Since the entry of the IT industry, there has been some improvement in the productivity in the agriculture. It has done a lot of work in the healthcare of the agriculture. Deep learning is a buzzword in the IT sector. This buzzword has helped a lot to improve the productivity of in the agriculture field. In the recent past, due to excessive use of human made chemicals and pesticides, the diseases in plants have increased in a higher rate. These diseases in agricultural plants cannot be ignored as it can be dangerous in later stages. Also due to lack of technical knowledge, sometimes it becomes difficult to detect these diseases. So, this paper presents a model for detecting the disease present in the paddy plant. The model uses transfer learning approach which is a paradigm of solving deep learning problems in an efficient manner. This model also finds the probability of the occurrence of disease which can be helpful to take some vital decisions related to plant’s health.

KEYWORDS: Transfer Learning, Convolutional Neural Network, Deep Learning, Paddy Crop Disease.

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.
  • About transfer learning.
  • 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 networks?

 

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