Deep learning in food science: An insight in evaluating Pickering emulsion properties by droplets classification and quantification via object detection algorithm

Adv Colloid Interface Sci. 2022 Jun:304:102663. doi: 10.1016/j.cis.2022.102663. Epub 2022 Apr 6.

Abstract

Understanding the complicated emulsion microstructures by microscopic images will help to further elaborate their mechanisms and relevance. The formidable goal of the classification and quantification of emulsion microstructure appears difficult to achieve. However, object detection algorithm in deep learning makes it feasible. This paper reports a new technique for evaluating Pickering emulsion properties through classification and quantification of the emulsion microstructure by object detection algorithm. The trained neural network models characterize the emulsion droplets by distinguishing between different individual emulsion droplets and morphological mechanisms from numerous microscopic images. The quantified results of the emulsion droplets presented in this study, provide details of statistical changes at different concentrations of the Pickering interface and storage temperatures enabling elucidation of the mechanisms involved. This methodology provides a new quantitative and statistical analysis of emulsion microstructure and properties.

Keywords: Characterization; Deep learning; Emulsion; Food microstructure; Morphology; Object detection algorithm; Pickering emulsion.

Publication types

  • Review

MeSH terms

  • Deep Learning*
  • Emulsions / chemistry
  • Food Technology
  • Particle Size

Substances

  • Emulsions