Abstract

Airborne remote sensing technologies have been widely applied in field crop phenotyping. However, the quality of current remote sensing data suffers from significant diurnal variances. The severity of the diurnal issue has been reported in various plant phenotyping studies over the last four decades, but there are limited studies on the modeling of the diurnal changing patterns that allow people to precisely predict the level of diurnal impacts. In order to comprehensively investigate the diurnal variability, it is necessary to collect time series field images with very high sampling frequencies, which has been difficult. In 2019, Purdue agricultural (Ag) engineers deployed their first field visible to near infrared (VNIR) hyperspectral gantry platform, which is capable of repetitively imaging the same field plots every 2.5 min. A total of 8631 hyperspectral images of the same field were collected for two genotypes of corn plants from the vegetative stage V4 to the reproductive stage R1 in the 2019 growing season. The analysis of these images showed that although the diurnal variability is very significant for almost all the image-derived phenotyping features, the diurnal changes follow stable patterns. This makes it possible to predict the imaging drifts by modeling the changing patterns. This paper reports detailed diurnal changing patterns for several selected plant phenotyping features such as Normalized Difference Vegetation Index (NDVI), Relative Water Content (RWC), and single spectrum bands. For example, NDVI showed a repeatable V-shaped diurnal pattern, which linearly drops by 0.012 per hour before the highest sun angle and increases thereafter by 0.010 per hour. The different diurnal changing patterns in different nitrogen stress treatments, genotypes and leaf stages were also compared and discussed. With the modeling results of this work, Ag remote sensing users will be able to more precisely estimate the deviation/change of crop feature predictions caused by the specific imaging time of the day. This will help people to more confidently decide on the acceptable imaging time window during a day. It can also be used to calibrate/compensate the remote sensing result against the time effect.

Highlights

  • With the result of this work, Ag remote sensing users will be able to more precisely understand the deviation/change of crop feature predictions caused by the specific imaging time of the day

  • The diurnal changing patterns models were built for various plant phenotyping features (including Normalized Difference Vegetation Index (NDVI), Relative Water Content (RWC), Band670 (Red) and Band760 (NIR))

  • The change of NDVI values was plotted to show the diurnal fluctuations from the raw imaging data (Figure 5)

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Summary

Introduction

Field phenotyping activities are being conducted with satellites, airborne platforms (manned and unmanned), and ground-based vehicles [3,4]. Various sensors such as RGB (Red–Green–Blue), hyperspectral and thermal cameras are carried by these platforms to take images of the crop field. These technologies have been proven effective through various Ag remote sensing projects [3,5]. The quality of Ag remote sensing data is still limited by various noise sources such as the changes of day light, wind speed, temperature, sun angle, etc.

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