Remote Sensing Image Classification for Land Cover Mapping in Developing Countries
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Date
2022-02-05
Journal Title
Journal ISSN
Volume Title
Publisher
IJCSNS International Journal of Computer Science and Network Security
Abstract
Convolutional Neural networks (CNNs) are a category of deep learning networks that have proven very effective in computer vision tasks such as image classification. Notwithstanding, not much has been seen in its use for remote sensing image classification in developing countries. This is majorly due to the scarcity of training data. Recently, transfer learning technique has successfully been used to develop state-of-the art models for remote sensing (RS) image classification tasks using training and testing data from well-known RS data
repositories. However, the ability of such model to classify RS test data from a different dataset has not been sufficiently investigated. In this paper, we propose a deep CNN model that
can classify RS test data from a dataset different from the training dataset. To achieve our objective, we first, re-trained a ResNet-50 model using EuroSAT, a large-scale RS dataset
to develop a base model then we integrated Augmentation and Ensemble learning to improve its generalization ability. We further experimented on the ability of this model to classify a novel dataset (Nig_Images). The final classification results shows that our model achieves a 96% and 80% accuracy on EuroSAT and Nig_Images test data respectively. Adequate
knowledge and usage of this framework is expected to encourage research and the usage of deep CNNs for land cover mapping in cases of lack of training data as obtainable in developing countries.
Description
Keywords
Convolutional neural network, remote sensing image classification, Land cover mapping, medium-resolution
Citation
Nzurumike Obianuju Lynda, Nwojo Agwu Nnanna and Moussa Mahamat Boukar (2022). Remote Sensing Image Classification for Land Cover Mapping in Developing Countries: A Novel Deep Learning Approach. IJCSNS International Journal of Computer Science and Network Security, 22(2)