With the complex structure of planktonic species and an immense amount of data captured from autonomous underwater vehicles (AUVs), a large burden is placed on the domain experts for plankton taxa labeling. At the same time, the most prominent machine learning (ML) methods for classification rely heavily on a massive amount of labeled datasets to create and train neural network classifier models that perform their tasks accurately. Active Learning (AL) is an ML paradigm that reduces this manual effort by proposing algorithms that support the construction of the training datasets, thus enlarging the sets while minimizing human involvement. To build the training set, AL methods apply heuristics to select a subset of images, i.e., samples, fro...
The WGMLEARN group was formed to explore the use of machine learning in the marine sci-ences, and wo...
Machine learning covers a large set of algorithms that can be trained to identify patterns in data. ...
The size of current plankton image datasets renders manual classification virtually infeasible. The ...
With an ever-increasing amount of image data, the manual labeling process has become the bottleneck ...
Möller T, Nilssen I, Nattkemper TW. Active learning for the classification of species in underwater ...
Learning a predictive model for a large scale real-world problem presents several challenges: the ch...
Plankton taxonomy is considered a multi-class classification problem. The current state-of-the-art d...
With recent advances in Machine Learning techniques based on Deep Neural Networks (DNNs), automated ...
International audienceQuantitative imaging instruments produce a large number of images of plankton ...
This paper improves on the accuracy of other published machine learning results for quantifying plan...
In the field of image processing, due to the need of expertise and skills in deep-sea biology and th...
Datasets and code from Luo et al., "Automated plankton image analysis using convolutional neural net...
Plankton is the most fundamental component of ocean ecosystems, due to its function at many levels o...
Detecting and classifying the plankton in situ to analyze the population diversity and abundance is ...
The Plankton Prediction System (PPS) is a joint project between the Computer Science and Zoology dep...
The WGMLEARN group was formed to explore the use of machine learning in the marine sci-ences, and wo...
Machine learning covers a large set of algorithms that can be trained to identify patterns in data. ...
The size of current plankton image datasets renders manual classification virtually infeasible. The ...
With an ever-increasing amount of image data, the manual labeling process has become the bottleneck ...
Möller T, Nilssen I, Nattkemper TW. Active learning for the classification of species in underwater ...
Learning a predictive model for a large scale real-world problem presents several challenges: the ch...
Plankton taxonomy is considered a multi-class classification problem. The current state-of-the-art d...
With recent advances in Machine Learning techniques based on Deep Neural Networks (DNNs), automated ...
International audienceQuantitative imaging instruments produce a large number of images of plankton ...
This paper improves on the accuracy of other published machine learning results for quantifying plan...
In the field of image processing, due to the need of expertise and skills in deep-sea biology and th...
Datasets and code from Luo et al., "Automated plankton image analysis using convolutional neural net...
Plankton is the most fundamental component of ocean ecosystems, due to its function at many levels o...
Detecting and classifying the plankton in situ to analyze the population diversity and abundance is ...
The Plankton Prediction System (PPS) is a joint project between the Computer Science and Zoology dep...
The WGMLEARN group was formed to explore the use of machine learning in the marine sci-ences, and wo...
Machine learning covers a large set of algorithms that can be trained to identify patterns in data. ...
The size of current plankton image datasets renders manual classification virtually infeasible. The ...