4.7 Article

Visible and Near-Infrared Hyperspectral Diurnal Variation Calibration for Corn Phenotyping Using Remote Sensing

Journal

REMOTE SENSING
Volume 15, Issue 12, Pages -

Publisher

MDPI
DOI: 10.3390/rs15123057

Keywords

diurnal spectral pattern; remote sensing; hyperspectral imaging; noise calibration; visible and near infrared

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Remote sensing coupled with hyperspectral technology is increasingly used to study plant growth, health, and productivity. However, diurnal variations in spectral characteristics introduce more data variance, compromising the performance of trait estimation models. In this study, a fixed gantry platform was used to capture VNIR hyperspectral images of corn canopies at consecutive time intervals. Diurnal calibration models were established at every wavelength, and using diurnal calibration in canopy spectra processing effectively reduced spectral variance brought about by varying imaging time.
Remote sensing coupled with hyperspectral technology has become increasingly popular to investigate plant traits, showcasing its advantages in studying plant growth, health, and productivity. The quality of the collected hyperspectral images is crucial for subsequent data analysis and plant phenotyping studies. However, diurnal variations in spectral characteristics introduce more data variance in canopy reflectance spectra, raising the cost of subsequent analyses and compromising the performance of trait estimation models. In this study, a fixed gantry platform in a cornfield was used to capture visible and near-infrared (VNIR) hyperspectral images of corn canopies at consecutive time intervals. By applying reference board calibration and locally weighted scatterplot smoothing to minimize the effects of ambient light and daily growth, diurnal spectral changes across all involved VNIR wavelengths were investigated. Several distinct diurnal patterns were observed to have close connections with the plants' physiological effects. Diurnal calibration models were established at every wavelength by employing the least squares polynomial algorithm, with the highest coefficient of determination reaching 0.84. Moreover, by employing diurnal calibration in canopy spectra processing, the reduction in spectral variance brought about by varying imaging time was evidently exhibited. This study not only reveals the diurnal spectral variation pattern at VNIR bands but also offers a reliable, straightforward, and low-cost approach to improve the quality of remote sensing data and reduce the inherent variance brought about via the different imaging times ensuring that comparable spectral analysis can be performed under relatively fair conditions.

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