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1.
Sci Rep ; 9(1): 6578, 2019 04 29.
Article in English | MEDLINE | ID: mdl-31036904

ABSTRACT

An array of sensors, including an HD camera mounted on a Fixed Underwater Observatory (FUO) were used to monitor a cold-water coral (Lophelia pertusa) reef in the Lofoten-Vesterålen area from April to November 2015. Image processing and deep learning enabled extraction of time series describing changes in coral colour and polyp activity (feeding). The image data was analysed together with data from the other sensors from the same period, to provide new insights into the short- and long-term dynamics in polyp features. The results indicate that diurnal variations and tidal current influenced polyp activity, by controlling the food supply. On a longer time-scale, the coral's tissue colour changed from white in the spring to slightly red during the summer months, which can be explained by a seasonal change in food supply. Our work shows, that using an effective integrative computational approach, the image time series is a new and rich source of information to understand and monitor the dynamics in underwater environments due to the high temporal resolution and coverage enabled with FUOs.


Subject(s)
Anthozoa/physiology , Coral Reefs , Feeding Behavior/physiology , Video Recording , Animals , Biodiversity , Color , Deep Learning , Geologic Sediments , Seawater
2.
PLoS One ; 11(6): e0157329, 2016.
Article in English | MEDLINE | ID: mdl-27285611

ABSTRACT

This paper presents a machine learning based approach for analyses of photos collected from laboratory experiments conducted to assess the potential impact of water-based drill cuttings on deep-water rhodolith-forming calcareous algae. This pilot study uses imaging technology to quantify and monitor the stress levels of the calcareous algae Mesophyllum engelhartii (Foslie) Adey caused by various degrees of light exposure, flow intensity and amount of sediment. A machine learning based algorithm was applied to assess the temporal variation of the calcareous algae size (∼ mass) and color automatically. Measured size and color were correlated to the photosynthetic efficiency (maximum quantum yield of charge separation in photosystem II, [Formula: see text]) and degree of sediment coverage using multivariate regression. The multivariate regression showed correlations between time and calcareous algae sizes, as well as correlations between fluorescence and calcareous algae colors.


Subject(s)
Geologic Sediments , Rhodophyta/physiology , Environmental Monitoring/instrumentation , Equipment Design , Geologic Sediments/analysis , Machine Learning , Photosynthesis , Photosystem II Protein Complex/metabolism , Pilot Projects , Rhodophyta/anatomy & histology , Rhodophyta/radiation effects , Stress, Physiological , Sunlight
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