AmodalAppleSize_RGB-D

The AmodalAppleSize_RGB-D dataset comprises a collection of RGB-D apple tree images that can be used to train and test computer vision-based fruit detection and sizing methods. This dataset encompasses two distinct sets of data obtained from a Fuji and an Elstar apple orchards. The Fuji apple orchar...

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Detalles Bibliográficos
Autores: Gené Mola, Jordi, Ferrer Ferrer, Mar, Hemming, Jochen, Dalfsen, Pieter van, Hoog, Dirk de, Sanz Cortiella, Ricardo, Rosell Polo, Joan Ramon, Morros Rubió, Josep Ramon, Vilaplana Besler, Verónica, Ruiz Hidalgo, Javier, Gregorio López, Eduard
Tipo de recurso: conjunto de datos
Fecha de publicación:2023
País:España
Institución:Consorci de Serveis Universitaris de Catalunya (CSUC)
Repositorio:CORA.Repositori de Dades de Recerca
OAI Identifier:oai:dnet:cora.rdr____::80679afd72674239a457a3ec70b5e0ea
Acceso en línea:https://doi.org/10.34810/DATA916
Access Level:acceso abierto
Palabra clave:Agricultural Sciences
Computer and Information Science
yield forecasting
fruit trees
apples
precision agriculture
measurement
Image segmentation
Range imaging
visibility
robotics
Descripción
Sumario:The AmodalAppleSize_RGB-D dataset comprises a collection of RGB-D apple tree images that can be used to train and test computer vision-based fruit detection and sizing methods. This dataset encompasses two distinct sets of data obtained from a Fuji and an Elstar apple orchards. The Fuji apple orchard sub-set consists of 3925 RGB-D images containing a total of 15335 apples annotated with both modal and amodal apple segmentation masks. Modal masks denote the visible portions of the apples, whereas amodal masks encompass both visible and occluded apple regions. Notably, this dataset is the first public resource to incorporate fruit amodal masks. This pioneering inclusion addresses a critical gap in existing datasets, enabling the development of robust automatic fruit sizing methods and accurate fruit visibility estimation, particularly in the presence of partial occlusions. Besides the fruit segmentation masks, the dataset also includes the fruit size (calliper) ground truth for each annotated apple. The second sub-set comprises 2731 RGB-D images capturing five Elstar apple trees at four distinct growth stages. This sub-set includes mean diameter information for each tree at every growth stage and serves as a valuable resource for evaluating fruit sizing methods trained with the first sub-set. The present data was employed in the research paper titled "Looking behind occlusions: a study on amodal segmentation for robust on-tree apple fruit size estimation".