International audienceThe design of a recognition system for natural objects is difficult, mainly because such objects are subject to a strong variability that cannot be easily modelled: planktonic species possess such highly variable forms. Existing plankton recognition systems usually comprise feature extraction processing upstream of a classifier. Drawbacks of such an approach are that the design of relevant feature extraction processes may be very difficult, especially if classes are numerous and if intra-class variability is high, so that the system becomes specific to the problem for which features have been tuned. The opposite course that we take is based on a structured multi-layer neural network with no shared weights, which genera...
The rise of in situ plankton imaging systems, particularly high-volume imagers such as the In Situ I...
This paper introduces a change in the structure of an artificial neuron (McCulloch and Pitts), to im...
Abstract. This paper proposes an object recognition system that is invariant to rotation, translatio...
International audienceThe design of a recognition system for natural objects is difficult, mainly be...
Neural network analysis is proposed and evaluated as a method of analysis of marine biological data...
Abstract—This paper introduces a multiple competitive learn-ing neural network fusion method for pat...
For the past few years, Convolutional Neural Networks have had tremendous impact not only within the...
The size of current plankton image datasets renders manual classification virtually infeasible. The ...
A system is described to recognize fish species by computer vision and a neural network program. The...
International audienceThe size of current plankton image datasets renders manual classification virt...
National audienceCNNs (Convolutional Neural Networks) are widely used for supervised classification....
A visual segmentation mechanism for a connectionist pattern recognition system is sought. However, t...
A supervised learning feedforward neural net, which combines the advantages of Neocognitron and Perc...
A number of researchers have investigated the application of neural networks to visual recognition, ...
This paper describes extensions to a self-organising object recognition system called PARADISE . T...
The rise of in situ plankton imaging systems, particularly high-volume imagers such as the In Situ I...
This paper introduces a change in the structure of an artificial neuron (McCulloch and Pitts), to im...
Abstract. This paper proposes an object recognition system that is invariant to rotation, translatio...
International audienceThe design of a recognition system for natural objects is difficult, mainly be...
Neural network analysis is proposed and evaluated as a method of analysis of marine biological data...
Abstract—This paper introduces a multiple competitive learn-ing neural network fusion method for pat...
For the past few years, Convolutional Neural Networks have had tremendous impact not only within the...
The size of current plankton image datasets renders manual classification virtually infeasible. The ...
A system is described to recognize fish species by computer vision and a neural network program. The...
International audienceThe size of current plankton image datasets renders manual classification virt...
National audienceCNNs (Convolutional Neural Networks) are widely used for supervised classification....
A visual segmentation mechanism for a connectionist pattern recognition system is sought. However, t...
A supervised learning feedforward neural net, which combines the advantages of Neocognitron and Perc...
A number of researchers have investigated the application of neural networks to visual recognition, ...
This paper describes extensions to a self-organising object recognition system called PARADISE . T...
The rise of in situ plankton imaging systems, particularly high-volume imagers such as the In Situ I...
This paper introduces a change in the structure of an artificial neuron (McCulloch and Pitts), to im...
Abstract. This paper proposes an object recognition system that is invariant to rotation, translatio...