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An algorithm competition for automatic species identification from herbarium specimens.
Little, Damon P; Tulig, Melissa; Tan, Kiat Chuan; Liu, Yulong; Belongie, Serge; Kaeser-Chen, Christine; Michelangeli, Fabián A; Panesar, Kiran; Guha, R V; Ambrose, Barbara A.
Afiliação
  • Little DP; The New York Botanical Garden 2900 Southern Boulevard Bronx New York 10458 USA.
  • Tulig M; The New York Botanical Garden 2900 Southern Boulevard Bronx New York 10458 USA.
  • Tan KC; Google Research 111 8th Avenue New York New York 10011 USA.
  • Liu Y; Google Research 111 8th Avenue New York New York 10011 USA.
  • Belongie S; Present address: Snapchat NYC 229 W. 43rd Street New York New York 10036 USA.
  • Kaeser-Chen C; Google Research 111 8th Avenue New York New York 10011 USA.
  • Michelangeli FA; Cornell Tech 2 W. Loop Rd. New York New York 10044 USA.
  • Panesar K; Google Research 111 8th Avenue New York New York 10011 USA.
  • Guha RV; The New York Botanical Garden 2900 Southern Boulevard Bronx New York 10458 USA.
  • Ambrose BA; Google Inc. 1600 Amphitheatre Parkway Mountain View California 94043 USA.
Appl Plant Sci ; 8(6): e11365, 2020 Jun.
Article em En | MEDLINE | ID: mdl-32626608
PREMISE: Plant biodiversity is threatened, yet many species remain undescribed. It is estimated that >50% of undescribed species have already been collected and are awaiting discovery in herbaria. Robust automatic species identification algorithms using machine learning could accelerate species discovery. METHODS: To encourage the development of an automatic species identification algorithm, we submitted our Herbarium 2019 data set to the Fine-Grained Visual Categorization sub-competition (FGVC6) hosted on the Kaggle platform. We chose to focus on the flowering plant family Melastomataceae because we have a large collection of imaged herbarium specimens (46,469 specimens representing 683 species) and taxonomic expertise in the family. As is common for herbarium collections, some species in this data set are represented by few specimens and others by many. RESULTS: In less than three months, the FGVC6 Herbarium 2019 Challenge drew 22 teams who entered 254 models for Melastomataceae species identification. The four best algorithms identified species with >88% accuracy. DISCUSSION: The FGVC competitions provide a unique opportunity for computer vision and machine learning experts to address difficult species-recognition problems. The Herbarium 2019 Challenge brought together a novel combination of collections resources, taxonomic expertise, and collaboration between botanists and computer scientists.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Diagnostic_studies / Prognostic_studies Idioma: En Ano de publicação: 2020 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Diagnostic_studies / Prognostic_studies Idioma: En Ano de publicação: 2020 Tipo de documento: Article