NDVI AND CUSTOMIZED CNN FOR LAND COVER SATELLITE IMAGE CLASSIFICATION
Journal: International Journal of Advanced Research (Vol.9, No. 6)Publication Date: 2021-06-16
Authors : Amee Daiya; Dharmesh Bhalodiya;
Page : 205-209
Keywords : Deep Learning Convolutional Neural Network Normalized Difference Vegetation Index Trainable Parameters;
Abstract
The efficient and the simplest deep learning algorithm of image classification is Convolutional Neural Network (CNN). In this paper we developed a customized CNN architecture for the classification of multi-spectral images from SAT-4 datasets. The sets Near-Infrared (NIR) band information as it can sense vegetation health. The domain knowledge of Normalized Difference Vegetation Index (NDVI) motivated us to utilize Red and NIR spectral bands together in the second level of experimentation for the classification.
Other Latest Articles
- FINISHING AND POLISHING OF DIRECT COMPOSITE RESTORATIONS - A REVIEW
- BUFFER SOLUTION BEHAVIOUR ON SOLUBILITY AND DISTRIBUTION COEFFICIENT OF BENZOIC ACID BETWEEN TWO IMMISCIBLE LIQUIDS
- INFLUENCE OF THE SIDE VENTILATION ON THE DURABILITY OF THE FUNCTIONING OF DRYING BEDS WITH NON-SATURATED FLOW IN TREATEMENT OF SEPTIC TANK SLUDGE
- PREDICTOR VARIABLES OF NEONATAL MORTALITY IN VERY-LOW-BIRTH-WEIGHT INFANTS
- A STUDY OF KNOWLEDGE, ATTITUDE & PRACTICE ON FOOD SAFETY AMONG THE FOOD HANDLERS IN THE RESTAURANTS OF KALYANI, DISTRICT: NADIA
Last modified: 2021-08-29 16:36:54