Optimizing BP neural network algorithm for Pericarpium Citri Reticulatae (Chenpi) origin traceability based on computer vision and ultra-fast gas-phase electronic nose data fusion

Food Chem. 2024 Jun 1:442:138408. doi: 10.1016/j.foodchem.2024.138408. Epub 2024 Jan 11.

Abstract

This study utilized computer vision to extract color and texture features of Pericarpium Citri Reticulatae (PCR). The ultra-fast gas-phase electronic nose (UF-GC-E-nose) technique successfully identified 98 volatile components, including olefins, alcohols, and esters, which significantly contribute to the flavor profile of PCR. Multivariate statistical Analysis was applied to the appearance traits of PCR, identifying 57 potential marker-trait factors (VIP > 1 and P < 0.05) from the 118 trait factors that can distinguish PCR from different origins. These factors include color, texture, and odor traits. By integrating multivariate statistical Analysis with the BP neural network algorithm, a novel artificial intelligence algorithm was developed and optimized for traceability of PCR origin. This algorithm achieved a 100% discrimination rate in differentiating PCR samples from various origins. This study offers a valuable reference and data support for developing intelligent algorithms that utilize data fusion from multiple intelligent sensory technologies to achieve rapid traceability of food origins.

Keywords: Computer vision; Intelligent algorithm; Multivariate statistics; Pericarpium Citri Reticulate; Traceability; Ultra-fast gas phase electronic nose.

MeSH terms

  • Algorithms
  • Artificial Intelligence
  • Citrus*
  • Computers
  • Drugs, Chinese Herbal*
  • Electronic Nose
  • Neural Networks, Computer

Substances

  • chenpi
  • Drugs, Chinese Herbal