Cross-Domain Transfer Learning for Natural Scene Classification of Remote-Sensing Imagery
Permanent link
https://hdl.handle.net/10037/31042Date
2023-07-05Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Natural scene classification, which has potential applications in precision agriculture,
environmental monitoring, and disaster management, poses significant challenges due to variations
in the spatial resolution, spectral resolution, texture, and size of remotely sensed images of natural
scenes on Earth. For such challenging problems, deep-learning-based algorithms have demonstrated
amazing performances in recent years. Among these methodologies, transfer learning is a useful
technique which employs the learned features already extracted from the pre-trained models from
large-scale datasets for the problem at hand, resulting in quicker and more accurate models. In
this study, we deployed cross-domain transfer learning for the land-cover classification of remotely
sensed images of natural scenes. We conducted extensive experiments to measure the performance
of the proposed method and explored the factors that affect the performance of the models. Our
findings suggest that fine-tuning the ResNet-50 model outperforms various other models in terms
of the classification accuracy. The experimental results showed that the deployed cross-domain
transfer-learning system achieved outstanding (99.5% and 99.1%) accurate performances compared
to previous benchmarks on the NaSC-TG2 dataset with the final tuning of the whole structure and
only the last three layers, respectively.
Publisher
MDPICitation
Akhtar, Murtza, Adnan, Saadia. Cross-Domain Transfer Learning for Natural Scene Classification of Remote-Sensing Imagery. Applied Sciences. 2023;13(13)Metadata
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