2020
DOI: 10.3390/rs12030489
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Monitoring of Coral Reefs Using Artificial Intelligence: A Feasible and Cost-Effective Approach

Abstract: Ecosystem monitoring is central to effective management, where rapid reporting is essential to provide timely advice. While digital imagery has greatly improved the speed of underwater data collection for monitoring benthic communities, image analysis remains a bottleneck in reporting observations. In recent years, a rapid evolution of artificial intelligence in image recognition has been evident in its broad applications in modern society, offering new opportunities for increasing the capabilities of coral re… Show more

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Cited by 104 publications
(103 citation statements)
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“…Images were analysed using a deep learning framework to extract important biological information about the composition of reef [46,47]. In 2014, 23,135 raw images were initially collected from the area, with a further 19,085 in 2018.…”
Section: Photo Quadrat Processingmentioning
confidence: 99%
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“…Images were analysed using a deep learning framework to extract important biological information about the composition of reef [46,47]. In 2014, 23,135 raw images were initially collected from the area, with a further 19,085 in 2018.…”
Section: Photo Quadrat Processingmentioning
confidence: 99%
“…A subset of 752 randomly sampled images were manually annotated at 100-point locations per image using CoralNet (http://coralnet.ucsd.edu/), where the substrate beneath each point was identified and assigned to one of 53 benthic substrate categories (see Appendix A, Table A2 for category labels and descriptions). Categories were derived from existing benthic classifications [48,49], modified to capture broad functional role but also limited by how reliably features could be identified from images by human annotators [47]. These manual annotations were used as training datasets to train a deep learning algorithm for automated image classification.…”
Section: Photo Quadrat Processingmentioning
confidence: 99%
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“…Understanding community responses to these disturbances and associated underlying relationships requires huge amounts of data in order to estimate all the potential responses to different disturbance exposures and their interactions. Emerging technologies for environmental conservation including artificial intelligence (González‐Rivero et al, 2020), coupled with modern quantitative frameworks for collecting and analysing ecological data, can help to learn from current environmental impacts, refine our knowledge and adapt our management practices as environmental regimes change into the future. Our results here demonstrate the necessity to consider both ecological and environmental interactions when studying coral reef responses to disturbances given that the decline in HC is expected to generate different reef dynamics.…”
Section: Discussionmentioning
confidence: 99%
“…Here we used data extracted from 145,000 observations of benthic community composition collected by the XL Catlin Seaview surveys on the northern sections of the GBR between 2012 and 2017 (González‐Rivero et al, 2019, 2020). A total of 23 coral reefs were surveyed in 2012 and some of them were resurveyed in order to monitor fine‐scale changes in community composition resulting from repeated exposure to cyclones and heat stress events.…”
Section: Introductionmentioning
confidence: 99%