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Convolutional Neural Networks and Transfer Learning Based Classification of Natural Landscape Images (CROSBI ID 276420)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Krstinić, Damir ; Braović, Maja ; Božić-Štulić, Dunja Convolutional Neural Networks and Transfer Learning Based Classification of Natural Landscape Images // Journal of universal computer science, 26 (2020), 2; 244-267

Podaci o odgovornosti

Krstinić, Damir ; Braović, Maja ; Božić-Štulić, Dunja

engleski

Convolutional Neural Networks and Transfer Learning Based Classification of Natural Landscape Images

Natural landscape image classification is a difficult problem in computer vision. Many classes that can be found in such images are often ambiguous and can easily be confused with each other (e.g. smoke and fog), and not just by a computer algorithm, but by a human as well. Since natural landscape video surveillance became relatively pervasive in recent years, in this paper we focus on the classification of natural landscape images taken mostly from forest fire monitoring towers. Since these images usually suffer from the lack of the usual low and middle level features (e.g. sharp edges and corners), and since their quality is degraded by atmospheric conditions, this makes the already difficult problem of natural landscape classification even more challenging. In this paper we tackle the problem of automatic natural landscape classification by proposing and evaluating a classifier based on a pretrained deep convolutional neural network and transfer learning.

deep learning, transfer learning, convolutional neural networks, image classification, natural landscape images, wildfire smoke

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Podaci o izdanju

26 (2)

2020.

244-267

objavljeno

0948-695X

0948-6968

Povezanost rada

Računarstvo

Poveznice
Indeksiranost