Portable Food-Freshness Prediction Platform Based on Colorimetric Barcode Combinatorics and Deep Convolutional Neural Networks

Adv Mater. 2020 Nov;32(45):e2004805. doi: 10.1002/adma.202004805. Epub 2020 Oct 1.

Abstract

Artificial scent screening systems (known as electronic noses, E-noses) have been researched extensively. A portable, automatic, and accurate, real-time E-nose requires both robust cross-reactive sensing and fingerprint pattern recognition. Few E-noses have been commercialized because they suffer from either sensing or pattern-recognition issues. Here, cross-reactive colorimetric barcode combinatorics and deep convolutional neural networks (DCNNs) are combined to form a system for monitoring meat freshness that concurrently provides scent fingerprint and fingerprint recognition. The barcodes-comprising 20 different types of porous nanocomposites of chitosan, dye, and cellulose acetate-form scent fingerprints that are identifiable by DCNN. A fully supervised DCNN trained using 3475 labeled barcode images predicts meat freshness with an overall accuracy of 98.5%. Incorporating DCNN into a smartphone application forms a simple platform for rapid barcode scanning and identification of food freshness in real time. The system is fast, accurate, and non-destructive, enabling consumers and all stakeholders in the food supply chain to monitor food freshness.

Keywords: colorimetric barcode combinatorics; deep convolutional neural networks; food freshness.

MeSH terms

  • Cellulose / analogs & derivatives
  • Cellulose / chemistry
  • Chitosan / chemistry
  • Colorimetry / instrumentation*
  • Coloring Agents / chemistry
  • Deep Learning*
  • Food Quality*
  • Nanocomposites / chemistry
  • Porosity

Substances

  • Coloring Agents
  • acetylcellulose
  • Cellulose
  • Chitosan