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LiDAR Platform for Acquisition of 3D Plant Phenotyping Database

Manuel G. Forero, Harold Murcia, Dehyro Méndez, Juan Betancourt-Lozano

2022Plants31 citationsDOIOpen Access PDF

Abstract

Currently, there are no free databases of 3D point clouds and images for seedling phenotyping. Therefore, this paper describes a platform for seedling scanning using 3D Lidar with which a database was acquired for use in plant phenotyping research. In total, 362 maize seedlings were recorded using an RGB camera and a SICK LMS4121R-13000 laser scanner with angular resolutions of 45° and 0.5° respectively. The scanned plants are diverse, with seedling captures ranging from less than 10 cm to 40 cm, and ranging from 7 to 24 days after planting in different light conditions in an indoor setting. The point clouds were processed to remove noise and imperfections with a mean absolute precision error of 0.03 cm, synchronized with the images, and time-stamped. The database includes the raw and processed data and manually assigned stem and leaf labels. As an example of a database application, a Random Forest classifier was employed to identify seedling parts based on morphological descriptors, with an accuracy of 89.41%.

Topics & Concepts

SeedlingLidarPoint cloudRangingRemote sensingRGB color modelClassifier (UML)Computer scienceDatabaseScannerRandom forestLaser scanningEnvironmental scienceArtificial intelligenceComputer visionGeographyLaserAgronomyBiologyOpticsTelecommunicationsPhysicsRemote Sensing and LiDAR ApplicationsSmart Agriculture and AIRemote Sensing in Agriculture
LiDAR Platform for Acquisition of 3D Plant Phenotyping Database | Litcius