Comparative Performance of Aerial RGB vs. Ground Hyperspectral Indices for Evaluating Water and Nitrogen Status in Sweet Maize

Author:

Colovic Milica1ORCID,Stellacci Anna Maria2ORCID,Mzid Nada34ORCID,Di Venosa Martina2,Todorovic Mladen5ORCID,Cantore Vito6ORCID,Albrizio Rossella7ORCID

Affiliation:

1. Istituto Nazionale di Fisica Nucleare, Sezione di Bari, 70125 Bari, Italy

2. Department of Soil, Plant and Food Sciences, University of Bari Aldo Moro, Via G. Amendola 165/a, 70126 Bari, Italy

3. Interdepartmental Research Centre on the “Earth Critical Zone”, Università degli Studi di Napoli Federico II, Via Università 100, Portici, 80055 Naples, Italy

4. Department of Agriculture, Università degli Studi di Napoli Federico II, Via Università 100, Portici, 80055 Naples, Italy

5. CIHEAM—Mediterranean Agronomic Institute of Bari, 70010 Valenzano, Italy

6. Institute of Sciences of Food Production (ISPA), National Research Council (CNR), Via Amendola, 122/O, 70125 Bari, Italy

7. Institute for Mediterranean Agricultural and Forestry Systems, National Research Council of Italy, P. le Enrico Fermi 1, 80055 Portici, Italy

Abstract

This study analyzed the capability of aerial RGB (red-green-blue) and hyperspectral-derived vegetation indices to assess the response of sweet maize (Zea mays var. saccharata L.) to different water and nitrogen inputs. A field experiment was carried out during 2020 by using both remote RGB images and ground hyperspectral sensor data. Physiological parameters (i.e., leaf area index, relative water content, leaf chlorophyll content index, and gas exchange parameters) were measured. Correlation and multivariate data analysis (principal component analysis and stepwise linear regression) were performed to assess the strength of the relationships between eco-physiological measured variables and both RGB indices and hyperspectral data. The results revealed that the red-edge indices including CIred-edge, NDRE and DD were the best predictors of the maize physiological traits. In addition, stepwise linear regression highlighted the importance of both WI and WI:NDVI for prediction of relative water content and crop temperature. Among the RGB indices, the green-area index showed a significant contribution in the prediction of leaf area index, stomatal conductance, leaf transpiration and relative water content. Moreover, the coefficients of correlation between studied crop variables and GGA, NDLuv and NDLab were higher than with the hyperspectral indices measured at the ground level. The findings confirmed the capacity of selected RGB and hyperspectral indices to evaluate the water and nitrogen status of sweet maize and provided opportunity to expand experimentation on other crops, diverse pedo-climatic conditions and management practices. Hence, the aerially collected RGB vegetation indices might represent a cost-effective solution for crop status assessment.

Funder

Master of Science Program in Water and Land Re-sources Management of CIHEAM Bari

Publisher

MDPI AG

Reference72 articles.

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