Land-Use Classification via Transfer Learning with a Deep Convolutional Neural Network

Weng, Chu-Yin (2022) Land-Use Classification via Transfer Learning with a Deep Convolutional Neural Network. Journal of Intelligent Learning Systems and Applications, 14 (02). pp. 15-23. ISSN 2150-8402

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Abstract

Land cover classification provides efficient and accurate information regarding human land-use, which is crucial for monitoring urban development patterns, management of water and other natural resources, and land-use planning and regulation. However, land-use classification requires highly trained, complex learning algorithms for accurate classification. Current machine learning techniques already exist to provide accurate image recognition. This research paper develops an image-based land-use classifier using transfer learning with a pre-trained ResNet-18 convolutional neural network. Variations of the resulting approach were compared to show a direct relationship between training dataset size and epoch length to accuracy. Experiment results show that transfer learning is an effective way to create models to classify satellite images of land-use with a predictive performance. This approach would be beneficial to the monitoring and predicting of urban development patterns, management of water and other natural resources, and land-use planning.

Item Type: Article
Subjects: Research Asian Plos > Engineering
Depositing User: Unnamed user with email support@research.asianplos.com
Date Deposited: 16 Feb 2023 11:52
Last Modified: 27 Jul 2024 13:16
URI: http://global.archiveopenbook.com/id/eprint/88

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