Hyperspectral imaging detection of decayed honey peaches based on their chlorophyll content

Food Chem. 2017 Nov 15:235:194-202. doi: 10.1016/j.foodchem.2017.05.064. Epub 2017 May 13.

Abstract

Honey peach is a very common but highly perishable market fruit. When pathogens infect fruit, chlorophyll as one of the important components related to fruit quality, decreased significantly. Here, the feasibility of hyperspectral imaging to determine the chlorophyll content thus distinguishing diseased peaches was investigated. Three optimal wavelengths (617nm, 675nm, and 818nm) were selected according to chlorophyll content via successive projections algorithm. Partial least square regression models were established to determine chlorophyll content. Three band ratios were obtained using these optimal wavelengths, which improved spatial details, but also integrates the information of chemical composition from spectral characteristics. The band ratio values were suitable to classify the diseased peaches with 98.75% accuracy and clearly show the spatial distribution of diseased parts. This study provides a new perspective for the selection of optimal wavelengths of hyperspectral imaging via chlorophyll content, thus enabling the detection of fungal diseases in peaches.

Keywords: Band ratio; Chlorophyll content; Diseases; Hyperspectral imaging; Peaches; Successive projections algorithm.

MeSH terms

  • Chlorophyll / analysis*
  • Honey / analysis*
  • Least-Squares Analysis
  • Models, Theoretical
  • Plant Leaves
  • Prunus persica / chemistry*
  • Spectrum Analysis

Substances

  • Chlorophyll