MGFEEN: a multi-granularity feature encoding ensemble network for remote sensing image classification

Deep convolutional neural networks (DCNNs) have emerged as powerful tools in diverse remote sensing domains, but their optimization remains challenging due to their complex nature and the large number of parameters involved. Researchers have been exploring more sophisticated methodologies to improve image classification accuracy. In this paper, we introduce a multi-granularity feature encoding ensemble network (MGFEEN) that is designed to fine-tune features at different levels of granularity. The network is trained in a two-step process: First, the output of granularity level i is used as the input for the next level; then, a fully connected layer is added to the pre-trained network to advance to the next level. The effectiveness of the MGFEEN’s feature extraction is evaluated by feeding the globally extracted features to a softmax classifier for classification. By applying ensemble learning principles, our proposed MGFEEN achieves more accurate final predictions. We evaluate our model on three widely recognized benchmark datasets: UC-Merced, SIRIWHU, and EAC-Dataset. Notably, on the EAC-Dataset, our results show a significant 0.54% improvement in accuracy over a single-training-network setup, resulting in an impressive 98.70% accuracy level.

Authors
Jean Bosco Musabe1 , Jean Pierre Rutarindwa1 , Muthanna M.S.2 , Jean Pierre Kwizera1 , Muthanna Ammar 3 , Abd El-Latif A.A.4, 5
Publisher
Springer-Verlag London Ltd
Number of issue
12
Language
English
Pages
6547-6558
Status
Published
Volume
36
Year
2024
Organizations
  • 1 Kigali Independent University (ULK)
  • 2 Southern Federal University
  • 3 Peoples’ Friendship University of Russia (RUDN University)
  • 4 Prince Sultan University
  • 5 Menoufia University
Keywords
Multi-granularity feature representation; convolution neural network; Feature ensemble network; remote sensing image classification; artificial intelligence; data mining and knowledge discovery; Probability and Statistics in Computer Science; Computational science and engineering; image processing and computer vision; Computational biology/bioinformatics
Date of creation
01.07.2024
Date of change
01.07.2024
Short link
https://repository.rudn.ru/en/records/article/record/111763/
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