Please use this identifier to cite or link to this item: 10.3390/horticulturae9121347
Title: Three-Dimensional Imaging in Agriculture: Challenges and Advancements in the Phenotyping of Japanese Quinces in Latvia
Authors: Kaufmane, Edīte
Edelmers, Edgars
Sudars, Kaspars
Namatevs, Ivars
Nikulins, Arturs
Strautiņa, Sarmīte
Kalniņa, Ieva
Peter, Astile
Medical Education Technology Centre
Keywords: Chaenomeles japonica;germplasm;genotypes;fruit size;characterization;volumetric data;point cloud;1.2 Computer and information sciences;1.6 Biological sciences;4.4 Agricultural biotechnology;1.1. Scientific article indexed in Web of Science and/or Scopus database
Issue Date: 17-Dec-2023
Citation: Kaufmane , E , Edelmers , E , Sudars , K , Namatevs , I , Nikulins , A , Strautiņa , S , Kalniņa , I & Peter , A 2023 , ' Three-Dimensional Imaging in Agriculture: Challenges and Advancements in the Phenotyping of Japanese Quinces in Latvia ' , Horticulturae , vol. 9 , no. 12 , 1347 . https://doi.org/10.3390/horticulturae9121347
Abstract: This study presents an innovative approach to fruit measurement using 3D imaging, focusing on Japanese quince (Chaenomeles japonica) cultivated in Latvia. The research consisted of two phases: manual measurements of fruit parameters (length and width) using a calliper and 3D imaging using an algorithm based on k-nearest neighbors (k-NN), the ingeniously designed “Imaginary Square” method, and object projection analysis. Our results revealed discrepancies between manual measurements and 3D imaging data, highlighting challenges in the precision and accuracy of 3D imaging techniques. The study identified two primary constraints: variability in fruit positioning on the scanning platform and difficulties in distinguishing individual fruits in close proximity. These limitations underscore the need for improved algorithmic capabilities to handle diverse spatial orientations and proximities. Our findings emphasize the importance of refining 3D scanning techniques for better reliability and accuracy in agricultural applications. Enhancements in image processing, depth perception algorithms, and machine learning models are crucial for effective implementation in diverse agricultural scenarios. This research not only contributes to the scientific understanding of 3D imaging in horticulture but also underscores its potential and limitations in advancing sustainable and productive farming practices.
Description: Publisher Copyright: © 2023 by the authors.
DOI: 10.3390/horticulturae9121347
ISSN: 2311-7524
Appears in Collections:Research outputs from Pure / Zinātniskās darbības rezultāti no ZDIS Pure

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