Automatic quantification and classification of microplastics in scanning electron micrographs via deep learning.

Journal: The Science of the total environment
Published Date:

Abstract

Microplastics quantification and classification are demanding jobs to monitor microplastic pollution and evaluate the potential health risks. In this paper, microplastics from daily supplies in diverse chemical compositions and shapes are imaged by scanning electron microscopy. It offers a greater depth and finer details of microplastics at a wider range of magnification than visible light microscopy or a digital camera, and permits further chemical composition analysis. However, it is labour-intensive to manually extract microplastics from micrographs, especially for small particles and thin fibres. A deep learning approach facilitates microplastics quantification and classification with a manually annotated dataset including 237 micrographs of microplastic particles (fragments or beads) in the range of 50 μm-1 mm and fibres with diameters around 10 μm. For microplastics quantification, two deep learning models (U-Net and MultiResUNet) were implemented for semantic segmentation. Both significantly outmatched conventional computer vision techniques and achieved a high average Jaccard index over 0.75. Especially, U-Net was combined with object-aware pixel embedding to perform instance segmentation on densely packed and tangled fibres for further quantification. For shape classification, a fine-tuned VGG16 neural network classifies microplastics based on their shapes with high accuracy of 98.33%. With trained models, it takes only seconds to segment and classify a new micrograph in high accuracy, which is remarkably cheaper and faster than manual labour. The growing datasets may benefit the identification and quantification of microplastics in environmental samples in future work.

Authors

  • Bin Shi
    Department of Materials Science and Engineering, University of Toronto, ON M5S 3H5, Canada. Electronic address: binmse.shi@mail.utoronto.ca.
  • Medhavi Patel
    Department of Chemical Engineering and Applied Chemistry, University of Toronto, ON M5S 3E5, Canada.
  • Dian Yu
    School of Competitive Sports, Shandong Sport University, Rizhao 276827, Shandong, China.
  • Jihui Yan
    Department of Materials Science and Engineering, University of Toronto, ON M5S 3H5, Canada.
  • Zhengyu Li
    Department of Mathematical and Computational Sciences, University of Toronto Mississauga, ON L5L 1C6, Canada.
  • David Petriw
    Department of Materials Science and Engineering, University of Toronto, ON M5S 3H5, Canada.
  • Thomas Pruyn
    Department of Materials Science and Engineering, University of Toronto, ON M5S 3H5, Canada.
  • Kelsey Smyth
    Department of Civil and Mineral Engineering, University of Toronto, ON M5S 1A4, Canada.
  • Elodie Passeport
    Department of Chemical Engineering and Applied Chemistry, University of Toronto, ON M5S 3E5, Canada; Department of Civil and Mineral Engineering, University of Toronto, ON M5S 1A4, Canada.
  • R J Dwayne Miller
    Departments of Chemistry and Physics, University of Toronto, ON M5S 3H6, Canada.
  • Jane Y Howe
    Department of Materials Science and Engineering, University of Toronto, ON M5S 3H5, Canada; Department of Chemical Engineering and Applied Chemistry, University of Toronto, ON M5S 3E5, Canada.