Leaf Disease Detection Using Deep Learning Techniques

Project Code :TCMAPY563

Objective

The main aim of this project is Detecting Leaf diseases of different plants and its precautions using Deep Learning Techniques

Abstract

Economy contributes the most for the productivity of agriculture. In agricultural field, the disease in plants is more common and the detection of disease in plants has become more feasible due to the above reason. This dais’s plant disease detection has acquired enlarging scrutiny in shrivelling crops of large and various fields. Farmers undergo significant hassles in chop and changing from one disease administer principle to a different one. We can identify or spotting the tomato leaf diseases for detection for surveillance and monitoring experts is the standard approach for detection. The plants get seriously affected if the proper control hasn't been taken and this represents the quality of the pants the production of the plants will be affected. Detection of disease through some mechanized technique and methodology is efficient and constructive because it decreases an outsized toil of surveilling in the large cultivation. In the premature phase we can detect the symptoms of the plant diseases since their first appearance on their leaves of the plants. By using this paper we can identify the algorithm which is used for image segmentation and for automated classification used for the detection of diseases of leaves in the plants. It also covers distinct disease classification methods of working which is used for the detection of diseases in plants.

The application of deep learning in plant disease recognition can avoid the disadvantages caused by artificial selection of disease spot features, make plant disease feature extraction more objective, and improve the research efficiency and technology transformation speed. This review provides the research progress of deep learning technology in the field of crop leaf disease identification in recent years. In this paper, we present the current trends and challenges for the detection of plant leaf disease using deep learning and advanced imaging techniques. We hope that this work will be a valuable resource for researchers who study the detection of plant diseases and insect pests. At the same time, we also discussed some of the current challenges and problems that need to be resolved.


Keyword: Plant leaf disease images, deep learning, Machine Learning, SVC, ANN, CNN, Resnet50.

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

Block Diagram

Specifications

SYSTEM SPECIFICATIONS:

H/W Specifications:

  • Processor                        :  I5/Intel Processor
  • RAM                                 :  8GB (min)
  • Hard Disk                        :  128 GB

S/W Specifications:

  • Operating System         :   Windows 10
  • Server-side Script          :   Python 3.6
  • IDE                                   :   PyCharm,Jupyter notebook
  • Libraries Used                :   Numpy, IO, OS, Flask, keras, pandas, tensorflow


Learning Outcomes

LEARNING OUTCOMES:

  • Practical exposure to
    • Hardware and software tools
    • Solution providing for real-time problems
    • Working with team/individual
    • Work on creative ideas
  • Testing techniques
  • Error correction mechanisms
  • What type of technology versions is used?
  • Working of Tensor Flow
  • Implementation of Deep Learning techniques
  • Working of CNN algorithm
  • Working of Transfer Learning methods
  • Building of model creations
  • Scope of project
  • Applications of the project
  • About Python language
  • About Deep Learning Frameworks
  • Use of Data Science

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