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Título: A methodology for detection and localization of fruits in apples orchards from aerial images.
Autor: SANTOS, T. T.
GEBLER, L.
Afiliación: THIAGO TEIXEIRA SANTOS, CNPTIA; LUCIANO GEBLER, CNPUV.
Año: 2021
Referencia: In: CONGRESSO BRASILEIRO DE AGROINFORMÁTICA, 13., 2021, Bagé. Anais [...]. Bagé: Unipampa, 2021.
Páginas: p. 1-9.
Descripción: Abstract. Computer vision methods based on convolutional neural networks (CNNs) have presented promising results on image-based fruit detection at ground-level for different crops. However, the integration of the detections found in different images, allowing accurate fruit counting and yield prediction, have received less attention. This work presents a methodology for automated fruit counting employing aerial-images. It includes algorithms based on multiple view geometry to perform fruits tracking, not just avoiding double counting but also locating the fruits in the 3-D space. Preliminary assessments show correlations above 0.8 between fruit counting and true yield for apples. The annotated dataset employed on CNN training is publicly available.
Thesagro: Maçã
NAL Thesaurus: Neural networks
Apples
Palabras clave: Redes neurais
Contagem automática de frutas
Detecção de maçãs
Convolutional neural networks
Fruit detection
ISBN: 978-65-00-34526-1
ISSN: 2177-9724
Notas: Organizado por Ana Paula Lüdtke Ferreira. SBIAgro 2021.
Tipo de Material: Artigo em anais e proceedings
Acceso: openAccess
Aparece en las colecciones:Artigo em anais de congresso (CNPTIA)

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