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Towards highly accurate coral texture images classification using deep convolutional neural networks and data augmentation

[PDF] 1-s2.0-S0957417418306523-main.pdf (3.316Mb)
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URI: https://hdl.handle.net/10481/100798
DOI: 10.1016/j.eswa.2018.10.010
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Author
Gómez Ríos, Anabel; Tabik, Siham; Luengo Martín, Julián; Herrera Triguero, Francisco
Editorial
Elsevier
Materia
Deep learning
 
convolutional neural network
 
ResNet-18
 
Date
2019-03
Sponsorship
Ministry of Science and Innovation, Spain (MICINN) Spanish Government TIN2017-89517-P
Abstract
The recognition of coral species based on underwater texture images poses a significant difficulty for machine learning algorithms, due to the three following challenges embedded in the nature of this data: (1) datasets do not include information about the global structure of the coral; (2) several species of coral have very similar characteristics; and (3) defining the spatial borders between classes is difficult as many corals tend to appear together in groups. For this reasons, the classification of coral species has always required an aid from a domain expert. The objective of this paper is to develop an accurate classification model for coral texture images. Current datasets contain a large number of imbalanced classes, while the images are subject to inter-class variation. We have focused on the current small datasets and analyzed (1) several Convolutional Neural Network (CNN) architectures, (2) data augmentation techniques and (3) transfer learning approaches. We have achieved the state-of-the art accuracies using different variations of ResNet on the two small coral texture datasets, EILAT and RSMAS.
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