Crop Pest Classification Model using ANN and CNN Deep Learning Techniques

Project Code :TCMAPY738

Objective

The main objective of this project is to detect the pest type using deep learning techniques.

Abstract

Timely treatment and elimination of diseases and pests can effectively improve the yield and quality of crops, but the current identification methods are difficult to achieve efficient and accurate research and analysis of diseases and pests. To solve this problem, this study proposes a crop pest identification method based on a multilayer network model. First, the method provides a reliable sample dataset for the recognition model through image data enhancement and other operations; the corresponding pest image recognition and analysis model is constructed based on VGG16 and Inception-ResNet-v2 transfer learning network to ensure the completeness of the recognition and analysis model; then, using the idea of an integrated algorithm, the two improved CNN series pest image recognition and analysis models are effectively fused to improve the accuracy of the model for crop pest recognition and classification. Simulation analysis is realized based on the IDADP dataset. Experimental results show that the accuracy of the proposed method for pest identification is 97.71%, which improves the poor identification effect of the current method

Keyword: Crops, Pests, deep learning, convolutional neural network (CNN),SVM, Resnet, Mobile Net, ANN and Vgg16, minutiae.

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

Block Diagram

Specifications

H/W Specifications:

β€’ Processor                         :  I5/Intel Processor

β€’ RAM                                    :  8GB (min)

β€’ Hard Disk                           :  128 GB


S/W Specifications:

β€’ Operating System              :   Windows 10

β€’ Server-side Script              :   Python 3.6

β€’ IDE                 :   PyCharm, Jupyter notebook

β€’ Libraries Used :   Numpy, IO, OS, Flask, Keras, pandas, tensorflow


Demo Video