2021 Celebration of Student Research and Creativity presentation"Harmful algae can grow rapidly into blooms and release toxins that can contaminate drinking water sources which can be unsafe to humans and wildlife. This research has discovered images belonging to seven different genera of harmful algae which were used as a data set to train a convolutional neural network (CNN) to automatically classify harmful algae at the microscopic level. After data augmentation, 20,010 images were trained on the network. Our CNN has shown an overall accuracy of 99.75%. The next steps include collecting more original images and modification the neural network architecture to improve the accuracy of unseen images."https://youtu.be/_ITLOd7DLF
Scientists are on the lookout for a practical model that can serve as a standard for sorting out, id...
Zooplankton have been used as indicators of aquatic ecosystem health, but their identification using...
The increasing threat of plant diseases poses a significant challenge to global food security. Rapid...
Machine learning modeling techniques have emerged as a potential means for predicting algal blooms. ...
Cell classification and cell counting are essential for the detection, monitoring, forecasting, and ...
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...
Freshwater algae can be used as indicators to monitor freshwater ecosystem condition because algae r...
This research paper presents a novel approach to classifying microscopic images of desmids using tra...
For the past few years, Convolutional Neural Networks have had tremendous impact not only within the...
WOS:000807246000005Microalgae are single-celled organisms that have been extensively utilized in bio...
International audiencePlants have become an important source of energy, and are a fundamental piece ...
The harmful effects of various algae blooms on human and marine life are well-known globally. It is ...
Hyperspectral imagery is effective to identify harmful cyanobacteria blooms by having an advantage i...
Algae represent the majority of the diversity on Earth and are a large group of organisms that have ...
Scientists are on the lookout for a practical model that can serve as a standard for sorting out, id...
Zooplankton have been used as indicators of aquatic ecosystem health, but their identification using...
The increasing threat of plant diseases poses a significant challenge to global food security. Rapid...
Machine learning modeling techniques have emerged as a potential means for predicting algal blooms. ...
Cell classification and cell counting are essential for the detection, monitoring, forecasting, and ...
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...
Freshwater algae can be used as indicators to monitor freshwater ecosystem condition because algae r...
This research paper presents a novel approach to classifying microscopic images of desmids using tra...
For the past few years, Convolutional Neural Networks have had tremendous impact not only within the...
WOS:000807246000005Microalgae are single-celled organisms that have been extensively utilized in bio...
International audiencePlants have become an important source of energy, and are a fundamental piece ...
The harmful effects of various algae blooms on human and marine life are well-known globally. It is ...
Hyperspectral imagery is effective to identify harmful cyanobacteria blooms by having an advantage i...
Algae represent the majority of the diversity on Earth and are a large group of organisms that have ...
Scientists are on the lookout for a practical model that can serve as a standard for sorting out, id...
Zooplankton have been used as indicators of aquatic ecosystem health, but their identification using...
The increasing threat of plant diseases poses a significant challenge to global food security. Rapid...