Cotton Leaf Disease Prediction Using Transfer Learning
Journal: International Journal of Computer Science and Mobile Computing - IJCSMC (Vol.11, No. 2)Publication Date: 2022-02-28
Authors : Abhishek P. Nachankar; Achal Radheshyam Ganvir; Shweta Raviji Yesambare; Tanuja Namdeo Fule; Sneha Diwakar Surjuse; Pradunya Rajendra Rangari;
Page : 136-142
Keywords : Cotton Leaf Disease Prediction; Transfer Learning;
Abstract
Cotton is one of the financially significant agricultural items in India, but it is exposed to different constraints in the leaf area. Mostly, these constraints are identified as diseases that are hard to detect with bare eyes. This study focused to develop a model to boost the detection of cotton leaf disease and pests using the deep learning technique. Basically here we did comparative study of own defined convolution neural network architecture and popular state of art CNN architecture. This study centered to foster a model to classify diseased and fresh Cotton plant and leaf using Deep Learning techniques.. For this exploration, almost 2400 examples (600 pictures in each class) were gotten to for the purpose of preparing. This created model is carried out utilizing python form 3.7.3 and the model is prepared on the profound learning bundle called Keras, TensorFlow supported, and Jupyter which are utilized as the formative climate. This model accomplished 96.4% accuracy of recognizing diseased and fresh cotton plant and leaf using transfer learning techniques.
Other Latest Articles
- META-ANALYSIS OF PEDESTRIAN WIND STUDIES: METHOD COMPATIBILITY FORINDIA AT 2025
- NUMERICAL INVESTIGATIONS AND MODELING OF LOADS ON OFF-SHORE WIND TURBINES
- STUDY ON OVARIAN TUMORS IN PEDIATRIC AND ADOLESCENT GIRLS IN A TERTIARY CARE CENTRE
- MATHEMATICAL MODELING OF CAROTID ARTERY WITH AN INCOMPRESSIBLE, NEWTONIAN AND AXISYMMETRIC FLOW
- ADVERTISEMENT AND ITS ROLE IN SHAPING CONSUMER BUYING BEHAVIOR: A THEORETICAL PERSPECTIVE
Last modified: 2022-03-09 20:30:19