Water and nitrogen in-situ imaging detection in live corn leaves using near-infrared camera and interference filter

Realizing imaging detection of water and nitrogen content in different regions of plant leaves in-site and real-time can provide an efficient new technology for determining crop drought resistance and nutrient regulation mechanisms, or for use in precision agriculture. Near-infrared imaging is the p...

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Veröffentlicht in:Plant methods 2021-11, Vol.17 (1), p.1-117, Article 117
Hauptverfasser: Zhang, Ning, Li, Peng-cheng, Liu, Hubin, Huang, Tian-cheng, Liu, Han, Kong, Yu, Dong, Zhi-cheng, Yuan, Yu-hui, Zhao, Long-lian, Li, Jun-hui
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Sprache:eng
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Zusammenfassung:Realizing imaging detection of water and nitrogen content in different regions of plant leaves in-site and real-time can provide an efficient new technology for determining crop drought resistance and nutrient regulation mechanisms, or for use in precision agriculture. Near-infrared imaging is the preferred technology for in-situ real-time detection owing to its non-destructive nature; moreover, it provides rich information. However, the use of hyperspectral imaging technology is limited as it is difficult to use it in field because of its high weight and power. We developed a smart imaging device using a near-infrared camera and an interference filter; it has a low weight, requires low power, and has a multi-wavelength resolution. The characteristic wavelengths of the filter that realize leaf moisture measurement are 1150 and 1400 nm, respectively, the characteristic wavelength of the filter that realizes nitrogen measurement is 1500 nm, and all filter bandwidths are 25 nm. The prediction result of the average leaf water content model obtained with the device was R.sup.2 = 0.930, RMSE = 1.030%; the prediction result of the average nitrogen content model was R.sup.2 = 0.750, RMSE = 0.263 g. Using the average water and nitrogen content model, an image of distribution of water and nitrogen in different areas of corn leaf was obtained, and its distribution characteristics were consistent with the actual leaf conditions. The experimental materials used in this research were fresh leaves in the field, and the test was completed indoors. Further verification of applying the device and model to the field is underway.
ISSN:1746-4811
1746-4811
DOI:10.1186/s13007-021-00815-5