Review Article |
A Comparative Study of the CNN Based Models Used for Remote Sensing Image Classification
Author(s): Supritha N1* and Dr. Narasimha Murthy M S2
Published In : International Journal of Electrical and Electronics Research (IJEER) Volume 11, Issue 3
Publisher : FOREX Publication
Published : 10 July 2023
e-ISSN : 2347-470X
Page(s) : 646-651
Abstract
Remotely sensed images, their classification and accuracy play a vital role in measuring a country’s scientific growth and technological development. Remote Sensing (RS) can be interpreted as a way of assessing the characteristics of a surface or an entity from a distance. This task of identifying and classifying datasets of RS images can be done using Convolutional Neural Network (CNN). For classifying images of large-scale areas, the traditional CNN approach produces coarse maps. For addressing this issue, Object based CNN method can be used. Classifying images with high spatial resolution can be done effectively using Object based image analysis. Deep learning methods offer the strength of auto learning the spatial features of an image. Object scale based adaptive CNN is a novel technique that can improve the accuracy of image classification of high spatial resolution images. For efficient RS image classification, a novel Deep learning approach called distributed CNN can be used which leads to enhanced accuracy of RS image classification. In this paper, three CNN models have been compared while considering the training time and efficiency to classify RS images as parameters of measure to assess the CNN models.
Keywords: Object scale-based CNN
, Object-based image analysis
, Multiscale CNN
, Distributed CNN
.
Supritha N*, Research Scholar, Department of Computer Science & Engineering, BMS Institute of Technological and Management, Bengaluru, VTU, Belgaum, Karnataka, India; Email: suprithan@gmail.com
Dr. Narasimha Murthy M S, Assistant Professor, Department of Information Science & Engineering, BMS Institute of Technological and Management, Bengaluru, VTU, Belgaum, Karnataka, India; Email: narasimhamurthyms@bmsit.in
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