Plankton taxonomy is considered a multi-class classification problem. The current state-of-the-art developments in machine learning and phytoplankton taxonomy, such as MorphoCluster, include using a convolutional neural network as a feature extractor and Hierarchical Density-Based Clustering for the classification of plankton and identification of outliers. These convolutional feature extraction algorithms achieved accuracies of 0.78 during the classification process. However, these feature extraction models are trained on clean datasets. They perform very well when analysing previously encountered and well-defined classes but do not perform well when tested on raw datasets expected in field deployment. Raw plankton datasets are unbalanced;...
Indiana University-Purdue University Indianapolis (IUPUI)Recently there has been a lot of effort in ...
Plankton communities form the basis of aquatic ecosystems and elucidating their role in increasingly...
Plankton imaging systems supported by automated classification and analysis have improved ecologists...
Plankton taxonomy is considered a multi-class classification problem. The current state-of-the-art d...
open2noWe would like to acknowledge the support that NVIDIA provided us through the GPU Grant Progra...
The Plankton Prediction System (PPS) is a joint project between the Computer Science and Zoology dep...
With recent advances in Machine Learning techniques based on Deep Neural Networks (DNNs), automated ...
Usingautomatedimagingtechnologies,itisnowpossibletogeneratepreviouslyunprecedented volumes of plankt...
The study of marine plankton data is vital to monitor the health of the world’s oceans. In recent de...
In recent decades, the automatic study and analysis of plankton communities using imaging techniques...
For the past few years, Convolutional Neural Networks have had tremendous impact not only within the...
The rise of in situ plankton imaging systems, particularly high‐volume imagers such as the In Situ I...
Submitted to the Joint Program in Applied Ocean Science and Engineering in partial fulfillment of t...
Learning a predictive model for a large scale real-world problem presents several challenges: the ch...
The rise of in situ plankton imaging systems, particularly high-volume imagers such as the In Situ I...
Indiana University-Purdue University Indianapolis (IUPUI)Recently there has been a lot of effort in ...
Plankton communities form the basis of aquatic ecosystems and elucidating their role in increasingly...
Plankton imaging systems supported by automated classification and analysis have improved ecologists...
Plankton taxonomy is considered a multi-class classification problem. The current state-of-the-art d...
open2noWe would like to acknowledge the support that NVIDIA provided us through the GPU Grant Progra...
The Plankton Prediction System (PPS) is a joint project between the Computer Science and Zoology dep...
With recent advances in Machine Learning techniques based on Deep Neural Networks (DNNs), automated ...
Usingautomatedimagingtechnologies,itisnowpossibletogeneratepreviouslyunprecedented volumes of plankt...
The study of marine plankton data is vital to monitor the health of the world’s oceans. In recent de...
In recent decades, the automatic study and analysis of plankton communities using imaging techniques...
For the past few years, Convolutional Neural Networks have had tremendous impact not only within the...
The rise of in situ plankton imaging systems, particularly high‐volume imagers such as the In Situ I...
Submitted to the Joint Program in Applied Ocean Science and Engineering in partial fulfillment of t...
Learning a predictive model for a large scale real-world problem presents several challenges: the ch...
The rise of in situ plankton imaging systems, particularly high-volume imagers such as the In Situ I...
Indiana University-Purdue University Indianapolis (IUPUI)Recently there has been a lot of effort in ...
Plankton communities form the basis of aquatic ecosystems and elucidating their role in increasingly...
Plankton imaging systems supported by automated classification and analysis have improved ecologists...