Radial basis function artificial neural networks (ANNs) were trained to discriminate between phytoplankton species based on 7 flow cytometric parameters measured on axenic cultures. Comparison was made between the performance of networks restricted to using radially-symmetric basis functions and networks using more general arbitrarily oriented ellipsoidal basis functions, with the latter proving significantly superior in performance. ANNs trained on 62, 54 and 72 taxa identified them with respectively 77, 73 and 70% overall success. As well as high success in identification, high confidence of correct identification was also achieved. Misidentifications resulted from overlap of character distributions. Improved overall identification succes...
A radial basis function neural network was employed to model the abundance of cyanobacteria. The tra...
Abstract-This paper describes a method of training an artificial neural network, specifically a mult...
This paper presents a dynamic model for the cell density measurement of Spirulina platensis by using...
Automatic taxonomic categorisation of 23 species of dinoflagellates was demonstrated using field-col...
The variability of phytoplankton distribution has been unraveled by high-frequency measurements. Suc...
SIGLEAvailable from British Library Document Supply Centre-DSC:DXN040041 / BLDSC - British Library D...
A new automatic identification system using photographic images has been designed to recognize fish,...
Abstract Background Phytoplankton species identification and counting is a crucial step of water qua...
Background: Phytoplankton species identification and counting is a crucial step of water quality ass...
This paper is a study of the value of applying artificial neural networks (ANNs),particularly a mult...
Cell classification and cell counting are essential for the detection, monitoring, forecasting, and ...
Phytoplankton form the basis of the marine food web and are an indicator for the overall status of t...
This paper describes a method of training an artificial neural network, specifically a multilayer pe...
This paper describes a method of training an artificial neural network, specifically a multilayer pe...
Zooplankton have been used as indicators of aquatic ecosystem health, but their identification using...
A radial basis function neural network was employed to model the abundance of cyanobacteria. The tra...
Abstract-This paper describes a method of training an artificial neural network, specifically a mult...
This paper presents a dynamic model for the cell density measurement of Spirulina platensis by using...
Automatic taxonomic categorisation of 23 species of dinoflagellates was demonstrated using field-col...
The variability of phytoplankton distribution has been unraveled by high-frequency measurements. Suc...
SIGLEAvailable from British Library Document Supply Centre-DSC:DXN040041 / BLDSC - British Library D...
A new automatic identification system using photographic images has been designed to recognize fish,...
Abstract Background Phytoplankton species identification and counting is a crucial step of water qua...
Background: Phytoplankton species identification and counting is a crucial step of water quality ass...
This paper is a study of the value of applying artificial neural networks (ANNs),particularly a mult...
Cell classification and cell counting are essential for the detection, monitoring, forecasting, and ...
Phytoplankton form the basis of the marine food web and are an indicator for the overall status of t...
This paper describes a method of training an artificial neural network, specifically a multilayer pe...
This paper describes a method of training an artificial neural network, specifically a multilayer pe...
Zooplankton have been used as indicators of aquatic ecosystem health, but their identification using...
A radial basis function neural network was employed to model the abundance of cyanobacteria. The tra...
Abstract-This paper describes a method of training an artificial neural network, specifically a mult...
This paper presents a dynamic model for the cell density measurement of Spirulina platensis by using...