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, [Formu...
Harmful algal blooms (HAB) incident have been increasingly reported in the country and it became a c...
Harmful algal blooms (HABs) can have significant negative economic, environmental and health impacts...
Machine learning modeling techniques have emerged as a potential means for predicting algal blooms. ...
<div><p>This paper presents a machine learning based approach for analyses of photos collected from ...
Water stress greatly determines plant yield as it affects plant metabolism, photosynthesis rate, chl...
Tâmega FT de S, Figueiredo MA de O. Peregrino Environmental Monitoring Calcareous Algae Project Imag...
Algal concentrations in marine environments are monitored regularly, as higher concentrations may le...
Harmful algal blooms (HABs) cause multiple problems all around the world. Algal blooms are known to ...
Machine learning (ML) models are widely used methods for analyzing data from sensors and satellites ...
An optical water quality modeling approach is being developed in conjunction with physiological meas...
Toxigenic cyanobacteria are one of the main health risks associated with water resources worldwide, ...
The harmful effects of various algae blooms on human and marine life are well-known globally. It is ...
"Cyanobacteria, also known as blue-green algae, are the most notorious bloom formers in freshwater e...
Industrial waste disrupts the natural production of microalgae cultures. Cultivation of microalgae i...
Plant Stress Analysis and classification using Image processing and machine learning model
Harmful algal blooms (HAB) incident have been increasingly reported in the country and it became a c...
Harmful algal blooms (HABs) can have significant negative economic, environmental and health impacts...
Machine learning modeling techniques have emerged as a potential means for predicting algal blooms. ...
<div><p>This paper presents a machine learning based approach for analyses of photos collected from ...
Water stress greatly determines plant yield as it affects plant metabolism, photosynthesis rate, chl...
Tâmega FT de S, Figueiredo MA de O. Peregrino Environmental Monitoring Calcareous Algae Project Imag...
Algal concentrations in marine environments are monitored regularly, as higher concentrations may le...
Harmful algal blooms (HABs) cause multiple problems all around the world. Algal blooms are known to ...
Machine learning (ML) models are widely used methods for analyzing data from sensors and satellites ...
An optical water quality modeling approach is being developed in conjunction with physiological meas...
Toxigenic cyanobacteria are one of the main health risks associated with water resources worldwide, ...
The harmful effects of various algae blooms on human and marine life are well-known globally. It is ...
"Cyanobacteria, also known as blue-green algae, are the most notorious bloom formers in freshwater e...
Industrial waste disrupts the natural production of microalgae cultures. Cultivation of microalgae i...
Plant Stress Analysis and classification using Image processing and machine learning model
Harmful algal blooms (HAB) incident have been increasingly reported in the country and it became a c...
Harmful algal blooms (HABs) can have significant negative economic, environmental and health impacts...
Machine learning modeling techniques have emerged as a potential means for predicting algal blooms. ...