Taxonomic resolution of coral image classification with Convolutional Neural Network

被引:0
作者
B. Reshma
B. Rahul
K. R. Sreenath
K. K. Joshi
George Grinson
机构
[1] Cochin University of Science and Technology,School of Engineering
[2] ICAR-Central Marine Fisheries Research Institute,School of Natural and Computing Science
[3] University of Aberdeen,undefined
[4] SAARC Agriculture Centre,undefined
来源
Aquatic Ecology | 2023年 / 57卷
关键词
Image classification; Automatic coral reef identification; Taxonomy; Deep Learning; Computer Vision;
D O I
暂无
中图分类号
学科分类号
摘要
Coral reefs are the most complex, diverse, and sensitive marine ecosystems, which are globally undergoing drastic changes. Changes in coral coverage, abundance, and diversity are difficult to track at adequate taxonomic resolution in a fast and efficient way. Deep Learning-enabled image recognition can help to increase the accuracy and can add to automating the entire survey process. However, the extent to which coral phylogenetic relationships within the higher taxonomic ranks are reflected by shared visual traits of the constituent species is an unresolved research subject. As a consequence, it is even more questionable whether the taxonomy of coral reefs at these levels can be identified from images using Machine Learning techniques. In this study, we analyzed the performance of Convolutional Neural Networks (CNN) through different taxonomic ranks to classify the underwater images. We have used 1,15,296 images from the CoralNet database comprising 104 species. A classifier was developed by fine-tuning the pre-trained ResNet34. The developed CNN classified 87.5% of 34,543 test images correctly to species level and 91.78% to genus level. The average classification recall on species level was 83.99%. The ability to classify coral photographs at the species level can significantly boost the amount of occurrence data collected from survey sites. Even anticipating a higher taxonomic level will be a great place to start for additional research on a completely unknown specimen. Hence, the new technique will be a very useful tool for forecasting and understanding ecological responses to the environmental changes.
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页码:845 / 861
页数:16
相关论文
共 190 条
[1]  
Adelson EH(2001)On seeing stuff: the perception of materials by humans and machines Proc Human Vision Electron Imag VI 4299 1-12
[2]  
Ani Brown Mary N(2018)Coral reef image/video classification employing novel octa-angled pattern for triangular sub-region and pulse-coupled convolutional neural network (PCCNN) Multimed Tools Appl 77 31545-31579
[3]  
Dejey D(2018)Classification of coral reef submarine images and videos using a novel Z with tilted Z local binary pattern (Z⊕TZLBP) Wireless Pers Commun 98 2427-2459
[4]  
Ani Brown Mary N(2019)A Taxonomy for coral reef classification components Int J Adv Sci Technol 81 3292-3297
[5]  
Dejey D(2015)Towards automated annotation of benthic survey images: variability of human experts and operational modes of automation PLoS ONE 10 43-51
[6]  
Azwin N(2008)Development and implementation of coral reef biocriteria in US jurisdictions Environ Monit Assess 150 465-529
[7]  
Noratiqah S(2012)Taxonomic classification of the reef coral family Mussidae (Cnidaria: Anthozoa: Scleractinia) Zool J Linn Soc 166 35-46
[8]  
Din NM(1995)Quantitative video sampling of coral reef benthos: large-scale application Coral Reefs 14 215-230
[9]  
Abd Almisreb A(2005)Human-induced physical disturbances and their indicators on coral reef habitats: a multi-scale approach Aquat Living Resour 18 221-234
[10]  
Beijbom O(1985)Interactions amongst herbivorous fishes on a coral reef: influence of spatial variation Mar Biol 89 459-473