Features extraction from multi-spectral remote sensing images based on multi-threshold binarization

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作者
Bohdan Rusyn
Oleksiy Lutsyk
Rostyslav Kosarevych
Taras Maksymyuk
Juraj Gazda
机构
[1] Karpenko Physico-Mechanical Institute,Department of Remote Sensing Information Technologies
[2] NAS of Ukraine,Department of Informatics and Teleinformatics
[3] Kazimierz Pulaski University of Technology and Humanities,Department of Telecommunications
[4] Lviv Polytechnic National University,Department of Computers and Informatics
[5] Technical University of Kosice,undefined
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In this paper, we propose a solution to resolve the limitation of deep CNN models in real-time applications. The proposed approach uses multi-threshold binarization over the whole multi-spectral remote sensing image to extract the vector of discriminative features for classification. We compare the classification accuracy and the training time of the proposed approach with ResNet and Ensemble CNN models. The proposed approach shows a significant advantage in accuracy for small datasets, while keeping very close recall score to both deep CNN models for larger datasets. On the other hand, regardless of the dataset size, the proposed multi-threshold binarization provides approximately 5 times lower training and inference time than both ResNet and Ensemble CNN models.
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