The size of current plankton image datasets renders manual classification virtually infeasible. The training of models for machine classification is complicated by the fact that a large number of classes consist of only a few examples. We employ the recently introduced weight imprinting technique in order to use the available training data to train accurate classifiers in absence of enough examples for some classes. The model architecture used in this work succeeds in the identification of plankton using machine learning with its unique challenges, i.e. a limited number of training examples and a severely skewed class size distribution. Weight imprinting enables a neural network to recognize small classes immediately without re-training. Th...
Advances in both hardware and software are enabling rapid proliferation of in situ plankton imaging ...
This repository contains ResNet50 model weights and sample images required to demonstrate the Rapid ...
With an ever-increasing amount of image data, the manual labeling process has become the bottleneck ...
International audienceThe size of current plankton image datasets renders manual classification virt...
The rise of in situ plankton imaging systems, particularly high-volume imagers such as the In Situ I...
The rise of in situ plankton imaging systems, particularly high‐volume imagers such as the In Situ I...
Deep convolutional neural networks have proven effective in computer vision, especially in the task ...
Learning a predictive model for a large scale real-world problem presents several challenges: the ch...
Plankton is the most fundamental component of ocean ecosystems, due to its function at many levels o...
This paper improves on the accuracy of other published machine learning results for quantifying plan...
International audienceThe design of a recognition system for natural objects is difficult, mainly be...
The acquisition of increasingly large plankton digital image datasets requires automatic methods of ...
International audienceImaging systems were developed to explore the fine scale distributions of plan...
International audienceQuantitative imaging instruments produce a large number of images of plankton ...
Plankton taxonomy is considered a multi-class classification problem. The current state-of-the-art d...
Advances in both hardware and software are enabling rapid proliferation of in situ plankton imaging ...
This repository contains ResNet50 model weights and sample images required to demonstrate the Rapid ...
With an ever-increasing amount of image data, the manual labeling process has become the bottleneck ...
International audienceThe size of current plankton image datasets renders manual classification virt...
The rise of in situ plankton imaging systems, particularly high-volume imagers such as the In Situ I...
The rise of in situ plankton imaging systems, particularly high‐volume imagers such as the In Situ I...
Deep convolutional neural networks have proven effective in computer vision, especially in the task ...
Learning a predictive model for a large scale real-world problem presents several challenges: the ch...
Plankton is the most fundamental component of ocean ecosystems, due to its function at many levels o...
This paper improves on the accuracy of other published machine learning results for quantifying plan...
International audienceThe design of a recognition system for natural objects is difficult, mainly be...
The acquisition of increasingly large plankton digital image datasets requires automatic methods of ...
International audienceImaging systems were developed to explore the fine scale distributions of plan...
International audienceQuantitative imaging instruments produce a large number of images of plankton ...
Plankton taxonomy is considered a multi-class classification problem. The current state-of-the-art d...
Advances in both hardware and software are enabling rapid proliferation of in situ plankton imaging ...
This repository contains ResNet50 model weights and sample images required to demonstrate the Rapid ...
With an ever-increasing amount of image data, the manual labeling process has become the bottleneck ...