Automated Classification of Skippers based on Parts Representation
نویسندگان
چکیده
American Entomologist • Winter 2008 Unlike pathway and multiaccess keys, which use diagnostic morphological characters, NemaScope uses point-and-click visual matching that allows users to navigate through a collection of images until images similar to specimens under investigation are found. High-definition multifocal images of genera provide the basis for the initial photos and can be viewed when additional morphological information is needed.
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