Pollen grains are complex three-dimensional structures, and are identified using specific distinctive morphological characteristics. An efficient automatic system for the accurate and rapid identification of pollen grains would significantly enhance the consistency, objectivity, speed and perhaps accuracy of pollen analysis. This study describes the development and testing of an expert system for the identification of pollen grains based on their respective morphologies. The extreme learning machine (ELM) is a type of artificial neural network, and has been used for automatic pollen identification. To test the equipment and the method, pollen grains from 10 species of Onopordum (a thistle genus) from Turkey were used. In total, 30 different...
Palynology is a botanical discipline devoted to the study of pollen and spores [1], focusing mainly ...
Palynology is the study of pollen, in particular, the pollen’s grain type, but the tasks of classifi...
We describe an investigation into how Massey University's Pollen Classifynder can accelerate the und...
Pollen grains are complex three-dimensional structures, and are identified using specific distinctiv...
Although pollen grains have a complicated 3-dimensional structure, they can be distinguished fromone...
Pollen identification and quantification are crucial but challenging tasks in addressing a variety o...
In allergology practice and research, it would be convenient to receive pollen identification and mo...
Pollen classification is considered an important task in palynology. In the Netherlands, two genera ...
Discriminating between black and white spruce (Picea mariana and Picea glauca) is a difficult palyno...
Palynological data are used in a wide range of applications, but the tasks of classification and cou...
light microscopy, pollen morphology A semi-automatic system for pollen recognition is studied for th...
In allergology practice and research, it would be convenient to receive pollen identification and mo...
International audiencePollen grains are valuable paleoclimate and paleovegetation proxies which requ...
In palynology, the visual classification of pollen grains from different species is a hard task whic...
Abstract Pollen identification is necessary for several subfields of geology, ecology, and evolution...
Palynology is a botanical discipline devoted to the study of pollen and spores [1], focusing mainly ...
Palynology is the study of pollen, in particular, the pollen’s grain type, but the tasks of classifi...
We describe an investigation into how Massey University's Pollen Classifynder can accelerate the und...
Pollen grains are complex three-dimensional structures, and are identified using specific distinctiv...
Although pollen grains have a complicated 3-dimensional structure, they can be distinguished fromone...
Pollen identification and quantification are crucial but challenging tasks in addressing a variety o...
In allergology practice and research, it would be convenient to receive pollen identification and mo...
Pollen classification is considered an important task in palynology. In the Netherlands, two genera ...
Discriminating between black and white spruce (Picea mariana and Picea glauca) is a difficult palyno...
Palynological data are used in a wide range of applications, but the tasks of classification and cou...
light microscopy, pollen morphology A semi-automatic system for pollen recognition is studied for th...
In allergology practice and research, it would be convenient to receive pollen identification and mo...
International audiencePollen grains are valuable paleoclimate and paleovegetation proxies which requ...
In palynology, the visual classification of pollen grains from different species is a hard task whic...
Abstract Pollen identification is necessary for several subfields of geology, ecology, and evolution...
Palynology is a botanical discipline devoted to the study of pollen and spores [1], focusing mainly ...
Palynology is the study of pollen, in particular, the pollen’s grain type, but the tasks of classifi...
We describe an investigation into how Massey University's Pollen Classifynder can accelerate the und...