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RaspberrySet: Dataset of Annotated Raspberry Images for Object Detection

Sarmīte Strautiņa, Ieva Kalniņa, Edīte Kaufmane, Kaspars Sudars, Ivars Namatēvs, Arturs Nikulins and Edgars Edelmers ()
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Sarmīte Strautiņa: Institute of Horticulture, Graudu iela 1, LV-3701 Ceriņi, Latvia
Ieva Kalniņa: Institute of Horticulture, Graudu iela 1, LV-3701 Ceriņi, Latvia
Edīte Kaufmane: Institute of Horticulture, Graudu iela 1, LV-3701 Ceriņi, Latvia
Kaspars Sudars: Institute of Electronics and Computer Science, Dzērbenes iela 14, LV-1006 Riga, Latvia
Ivars Namatēvs: Institute of Electronics and Computer Science, Dzērbenes iela 14, LV-1006 Riga, Latvia
Arturs Nikulins: Institute of Electronics and Computer Science, Dzērbenes iela 14, LV-1006 Riga, Latvia
Edgars Edelmers: Institute of Electronics and Computer Science, Dzērbenes iela 14, LV-1006 Riga, Latvia

Data, 2023, vol. 8, issue 5, 1-5

Abstract: The RaspberrySet dataset is a valuable resource for those working in the field of agriculture, particularly in the selection and breeding of ecologically adaptable berry cultivars. This is because long-term changes in temperature and weather patterns have made it increasingly important for crops to be able to adapt to their environment. To assess the suitability of different cultivars or to make yield predictions, it is necessary to describe and evaluate berries’ characteristics at various growth stages. This process is typically carried out visually, but it can be time-consuming and labor-intensive, requiring significant expert knowledge. The RaspberrySet dataset was created to assist with this process, and it includes images of raspberry berries at five different stages of development. These stages are flower buds, flowers, unripe berries, and ripe berries. All these stages of raspberry images classified buds, damaged buds, flowers, unripe berries, and ripe berries and were annotated using ground truth ROI and presented in YOLO format. The dataset includes 2039 high-resolution RGB images, with a total of 46,659 annotations provided by experts using Label Studio software (1.7.1). The images were taken in various weather conditions, at different times of the day, and from different angles, and they include fully visible buds, flowers, berries, and partially obscured buds. This dataset is intended to improve the efficiency of berry breeding and yield estimation and to identify the raspberry phenotype more accurately. It may also be useful for breeding other fruit crops, as it allows for the reliable detection and phenotyping of yield components at different stages of development. By providing a homogenized dataset of images taken on-site at the Institute of Horticulture in Dobele, Latvia, the RaspberrySet dataset offers a valuable resource for those working in horticulture.

Keywords: computer vision; precision horticulture; rubus idaeus; berry detection (search for similar items in EconPapers)
JEL-codes: C8 C80 C81 C82 C83 (search for similar items in EconPapers)
Date: 2023
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