In this paper, we present a novel method for vision based plants phenotyping in indoor vertical farming under artificial lighting. The method combines 3D plants modeling and deep segmentation of the higher leaves, during a period of 25–30 days, related to their growth. The novelty of our approach is in providing 3D reconstruction, leaf segmentation, geometric surface modeling, and deep network estimation for weight prediction to effectively measure plant growth, under three relevant phenotype features: height, weight and leaf area. Together with the vision based measurements, to verify the soundness of our proposed method, we also harvested the plants at specific time periods to take manual measurements, collecting a great amount of data. In particular, we manually collected 2592 data points related to the plant phenotype and 1728 images of the plants. This allowed us to show with a good number of experiments that the vision based methods ensure a quite accurate prediction of the considered features, providing a way to predict plant behavior, under specific conditions, without any need to resort to human measurements.

Vision based modeling of plants phenotyping in vertical farming under artificial lighting / Franchetti, B.; Ntouskos, V.; Giuliani, P.; Herman, T.; Barnes, L.; Pirri, F.. - In: SENSORS. - ISSN 1424-8220. - 19:20(2019). [10.3390/s19204378]

Vision based modeling of plants phenotyping in vertical farming under artificial lighting

Ntouskos V.
;
Pirri F.
2019

Abstract

In this paper, we present a novel method for vision based plants phenotyping in indoor vertical farming under artificial lighting. The method combines 3D plants modeling and deep segmentation of the higher leaves, during a period of 25–30 days, related to their growth. The novelty of our approach is in providing 3D reconstruction, leaf segmentation, geometric surface modeling, and deep network estimation for weight prediction to effectively measure plant growth, under three relevant phenotype features: height, weight and leaf area. Together with the vision based measurements, to verify the soundness of our proposed method, we also harvested the plants at specific time periods to take manual measurements, collecting a great amount of data. In particular, we manually collected 2592 data points related to the plant phenotype and 1728 images of the plants. This allowed us to show with a good number of experiments that the vision based methods ensure a quite accurate prediction of the considered features, providing a way to predict plant behavior, under specific conditions, without any need to resort to human measurements.
2019
LED; Plants growth prediction; Vertical farming; Vision based phenotyping; Agriculture; Farms; Imaging, Three-Dimensional; Lighting; Phenotype; Plant Leaves; Plants
01 Pubblicazione su rivista::01a Articolo in rivista
Vision based modeling of plants phenotyping in vertical farming under artificial lighting / Franchetti, B.; Ntouskos, V.; Giuliani, P.; Herman, T.; Barnes, L.; Pirri, F.. - In: SENSORS. - ISSN 1424-8220. - 19:20(2019). [10.3390/s19204378]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1379246
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