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Classification of Corals in Reflectance and Fluorescence Images Using Convolutional Neural Network Representations
Conference proceeding

Classification of Corals in Reflectance and Fluorescence Images Using Convolutional Neural Network Representations

Lian Xu, Mohammed Bennamoun, Senjian An, Ferdous Sohel and Farid Boussaid
2018 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), pp.1493-1497
2018 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP) (Calgary, AB, Canada, 15/04/2018–20/04/2018)
2018

Abstract

Australia Convolutional codes coral image classification deep convolutional features Feature extraction fluorescence Image coding Support vector machines Task analysis Training Transfer learning VLAD encoding
Coral species, with complex morphology and ambiguous boundaries, pose a great challenge for automated classification. CNN activations, which are extracted from fully connected layers of deep networks (FC features), have been successfully used as powerful universal representations in many visual tasks. In this paper, we investigate the transferability and combined performance of FC features and CONY features (extracted from convolutional layers) in the coral classification of two image modalities (reflectance and fluorescence), using a typical deep network (e.g. VGGNet). We exploit vector of locally aggregated descriptors (VLAD) encoding and principal component analysis (PCA) to compress dense CONY features into a compact representation. Experimental results demonstrate that encoded CONV3 features achieve superior performances on reflectance and fluorescence coral images, compared to FC features. The combination of these two features further improves the overall accuracy and achieves state-of-the-art performance on the challenging EFC dataset.

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UN Sustainable Development Goals (SDGs)

This output has contributed to the advancement of the following goals:

#13 Climate Action
#14 Life Below Water

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