计算机科学
摄影测量学
激光雷达
人工智能
深度学习
温室
异常检测
计算机视觉
机器学习
遥感
地理
生物
园艺
作者
Iva Xhimitiku,Federico Bianchi,Massimiliano Proietti,Tommaso Tocci,Andrea Marini,Lorenzo Menculini,Loris Francesco Termite,Edvige Pucci,Alberto Garinei,Marcello Marconi,Gianluca Rossi
标识
DOI:10.1109/metroagrifor52389.2021.9628481
摘要
This paper presents a comparison of different methodologies for monitoring the plants growth in a greenhouse. A 2D measurement based on Computer Vision algorithms and 3D shape measurements techniques (Structured light, LIDAR and photogrammetry) are compared. From the joined 2D and 3D data, an analysis was performed considering health plant indicators. The methodologies are compared among each other. The acquired data are then fed into Deep Learning algorithms in order to detect anomalies in plant growth. The final aim is to give an assessment on the image acquisition methodologies, selecting the most suitable to be used to create the Deep Learning model inputs saving time and resources.
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