Abstract

Changes in spatial and temporal variability in yield estimation are detectable through plant biophysical characteristics observed at different phenological development stages of corn. A multispectral red-edge sensor mounted on an Unmanned Aerial Systems (UAS) can provide spatial and temporal information with high resolution. Spectral analysis of UAS acquired spatiotemporal images can be used to develop a statistical model to predict yield based on different phenological stages. Identifying critical vegetation indices (VIs) and significant spectral information could lead to increased yield prediction accuracy. The objective of this study was to develop a yield prediction model at specific phenological stages using spectral data obtained from a corn field. The available spectral bands (red, blue, green, near infrared (NIR), and red-edge) were used to analyze 26 different VIs. The spectral information was collected from a cornfield at Mississippi State University using a MicaSense multispectral red-edge sensor, mounted on a UAS. In this research, a new empirical method used to reduce the effects of bare soil pixels in acquired images was introduced. The experimental design was a randomized complete block that consisted of 16 blocks with 12 rows of corn planted in each block. Four treatments of nitrogen (N) including 0, 90, 180, and 270 kg/ha were applied randomly. Random forest was utilized as a feature selection method to choose the best combination of variables for different stages. Multiple linear regression and gradient boosting decision trees were used to develop yield prediction models for each specific phenological stage by utilizing the most effective variables at each stage. At the V3 (3 leaves with visible leaf collar) and V4-5 (4-5 leaves with visible leaf collar) stages, the Optimized Soil Adjusted Vegetation Index (OSAVI) and Simplified Canopy Chlorophyll Content Index (SCCCI) were the single dominant variables in the yield predicting models, respectively. A combination of the Green Atmospherically Resistant Index (GARI), Normalized Difference Red-Edge (NDRE), and green Normalized Difference Vegetation Index (GNDVI) at V6-7, SCCCI, and Soil-Adjusted Vegetation Index (SAVI) at V10,11, and SCCCI, Green Leaf Index (GLI), and Visible Atmospherically Resistant Index (VARIgreen) at tasseling stage (VT) were the best indices for predicting grain yield of corn. The prediction models at V10 and VT had the greatest accuracy with a coefficient of determination of 0.90 and 0.93, respectively. Moreover, the SCCCI as a combined index seemed to be the most proper index for predicting yield at most of the phenological stages. As corn development progressed, the models predicted final grain yield more accurately.

Highlights

  • Estimation of corn yield during the crop-growing season is essential for efficient management of corn at strategic phenological stages

  • The spectral information collected by pixels is used to compute vegetation indices (VIs), which are algorithms derived from the spectral transformation of reflectance at two or more specified wavelengths and are used to evaluate vegetative cover or biomass and plant growth or health status

  • The Unmanned Aerial Systems (UAS) equipped with the RedEdgeTM multispectral camera can be used to detect spatial and temporal variability in biophysical characteristics of corn, such as spectral reflectance for the specified wavelengths, which can be used to compute multiple VIs

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Summary

Introduction

Estimation of corn yield during the crop-growing season is essential for efficient management of corn at strategic phenological stages. The UAS equipped with the RedEdgeTM multispectral camera can be used to detect spatial and temporal variability in biophysical characteristics of corn, such as spectral reflectance for the specified wavelengths, which can be used to compute multiple VIs. Satellite imagery is routinely used to estimate yield of different crops [7,8,9]. A UAS can acquire data from low altitude; where, interference by clouds is not an obstacle between the sensor and land surface [12,13], but shadows created by them can still be an issue Another advantage of a UAS is they can provide greater spatial resolution, and flights can be scheduled for key periods of designated phenological stages considering the weather conditions. The study was undertaken on an experimental plot at Mississippi State University

Materials and Methods
Vegetation Indices
Masking Soil Pixels
Harvesting Process
Outlier Detection
Feature Selection
Findings
Statistical Analysis
Full Text
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