Foods (Dec 2022)

Bayesian Fusion Model Enhanced Codfish Classification Using Near Infrared and Raman Spectrum

  • Yi Xu,
  • Anastasios Koidis,
  • Xingguo Tian,
  • Sai Xu,
  • Xiaoyan Xu,
  • Xiaoqun Wei,
  • Aimin Jiang,
  • Hongtao Lei

DOI
https://doi.org/10.3390/foods11244100
Journal volume & issue
Vol. 11, no. 24
p. 4100

Abstract

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In this study, a Bayesian-based decision fusion technique was developed for the first time to quickly and non-destructively identify codfish using near infrared (NIRS) and Raman spectroscopy (RS). NIRS and RS spectra from 320 codfish samples were collected, and separate partial least squares discriminant analysis (PLS-DA) models were developed to establish the relationship between the raw data and cod identity for each spectral technique. Three decision fusion methods: decision fusion, data layer or feature layer, were tested and compared. The decision fusion model based on the Bayesian algorithm (NIRS-RS-B) was developed on the optimal discrimination features of NIRS and RS data (NIRS-RS) extracted by the PLS-DA method whereas the other fusion models followed conventional, non-Bayesian approaches. The Bayesian model showed enhanced classification metrics (92% sensitivity, 98% specificity, 98% accuracy) that were significantly superior to those demonstrated by any of other two spectroscopic methods (NIRS, RS) and the two data fusion methods (data layer fused, NIRS-RS-D, or feature layer fused, NIRS-RS-F). This novel proposed approach can provide an alternative classification for codfish and potentially other food speciation cases.

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