2019
DOI: 10.2135/tppj2019.02.0003
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Lidar and RGB Image Analysis to Predict Hairy Vetch Biomass in Breeding Nurseries

Abstract: Core Ideas Early‐season biomass is conventionally phenotyped by subjective visual estimates. RGB image data are highly predictive of biomass in hairy vetch breeding plots. Lidar and RGB image data can be combined to accurately predict sward biomass. Remote sensing could increase genetic gain potential for biomass in cover crops. Hairy vetch (Vicia villosa Roth) is an annual legume grown as a forage and cover crop. To improve cover crop function, traits such as biomass production are of high interest for cove… Show more

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Cited by 16 publications
(5 citation statements)
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“…To gain even better results, more accurate methods of estimating plant height should be considered e.g., having reference altitudes measured in the fields (more than 30 points) to build digital terrain models or making an aerial survey of the bare soil of the field. Finally, different technologies should be considered such as LiDAR (Deery et al, 2014;Wiering et al, 2019) or ultrasonic sensors mounted on tractors (Farooque et al, 2013) as well as more resolved imaging sensors such as RGB cameras with very high spatial resolutions.…”
Section: Future Perspectivesmentioning
confidence: 99%
“…To gain even better results, more accurate methods of estimating plant height should be considered e.g., having reference altitudes measured in the fields (more than 30 points) to build digital terrain models or making an aerial survey of the bare soil of the field. Finally, different technologies should be considered such as LiDAR (Deery et al, 2014;Wiering et al, 2019) or ultrasonic sensors mounted on tractors (Farooque et al, 2013) as well as more resolved imaging sensors such as RGB cameras with very high spatial resolutions.…”
Section: Future Perspectivesmentioning
confidence: 99%
“…Despite being identified in other literature (Maimaitijiang et al, 2019) as an important trait for biomass prediction, canopy volume was not chosen at any stage. One reason may be the lack of information below the canopy surface provided by RGB cameras, to identify differences in actual biovolume (Wiering et al, 2019).…”
Section: Discussionmentioning
confidence: 99%
“…Fluorescence imaging, as described by Valcke (2021) , acts as a sentinel for photosynthetic efficiency, flagging potential stressors indicated by fluorescence deviations. Stereoscopic imaging and light detection and ranging (LIDAR) provide spatial insights on plant biomass and terrain ( Wiering et al., 2019 ) facilitating superior drainage systems and optimal layout configurations for crop growth. Simultaneously, X-ray imaging offers a promising modality for meticulous seed quality assessments ensuring that farmers have access to defect-free seeds ( de Medeiros et al., 2021 ).…”
Section: Technological Innovations In Vegetable Cultivationmentioning
confidence: 99%