Low-Cost Hyperspectral Imaging to Detect Drought Stress in High-Throughput Phenotyping

Plants (Basel). 2023 Apr 21;12(8):1730. doi: 10.3390/plants12081730.

Abstract

Recent developments in low-cost imaging hyperspectral cameras have opened up new possibilities for high-throughput phenotyping (HTP), allowing for high-resolution spectral data to be obtained in the visible and near-infrared spectral range. This study presents, for the first time, the integration of a low-cost hyperspectral camera Senop HSC-2 into an HTP platform to evaluate the drought stress resistance and physiological response of four tomato genotypes (770P, 990P, Red Setter and Torremaggiore) during two cycles of well-watered and deficit irrigation. Over 120 gigabytes of hyperspectral data were collected, and an innovative segmentation method able to reduce the hyperspectral dataset by 85.5% was developed and applied. A hyperspectral index (H-index) based on the red-edge slope was selected, and its ability to discriminate stress conditions was compared with three optical indices (OIs) obtained by the HTP platform. The analysis of variance (ANOVA) applied to the OIs and H-index revealed the better capacity of the H-index to describe the dynamic of drought stress trend compared to OIs, especially in the first stress and recovery phases. Selected OIs were instead capable of describing structural changes during plant growth. Finally, the OIs and H-index results have revealed a higher susceptibility to drought stress in 770P and 990P than Red Setter and Torremaggiore genotypes.

Keywords: drought stress; high-throughput phenotyping; hue; hyperspectral index; low-cost hyperspectral camera; optical sensor; projected shoot area; red-edge; senescence index; tomato.

Grants and funding

The work is supported by the project “E-crops—Technologies for Digital and Sustainable Agriculture”, funded by the Italian Ministry of University and Research (MUR) under the PON Agrifood Program (Contract ARS01_01136).