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FPNC Net: A hydrogenation catalyst image recognition algorithm based on deep learning

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  • Shichao Hou
  • Peng Zhao
  • Peng Cui
  • Hua Xu
  • Jinrong Zhang
  • Jian Liu
  • Mi An
  • Xinchen Lin

Abstract

The identification research of hydrogenation catalyst information has always been one of the most important businesses in the chemical industry. In order to aid researchers in efficiently screening high-performance catalyst carriers and tackle the pressing challenge at hand, it is imperative to find a solution for the intelligent recognition of hydrogenation catalyst images. To address the issue of low recognition accuracy caused by adhesion and stacking of hydrogenation catalysts, An image recognition algorithm of hydrogenation catalyst based on FPNC Net was proposed in this paper. In the present study, Resnet50 backbone network was used to extract the features, and spatially-separable convolution kernel was used to extract the multi-scale features of catalyst fringe. In addition, to effectively segment the adhesive regions of stripes, FPN (Feature Pyramid Network) is added to the backbone network for deep and shallow feature fusion. Introducing an attention module to adaptively adjust weights can effectively highlight the target features of the catalyst. The experimental results showed that the FPNC Net model achieved an accuracy of 94.2% and an AP value improvement of 19.37% compared to the original CenterNet model. The improved model demonstrates a significant enhancement in detection accuracy, indicating a high capability for detecting hydrogenation catalyst targets

Suggested Citation

  • Shichao Hou & Peng Zhao & Peng Cui & Hua Xu & Jinrong Zhang & Jian Liu & Mi An & Xinchen Lin, 2024. "FPNC Net: A hydrogenation catalyst image recognition algorithm based on deep learning," PLOS ONE, Public Library of Science, vol. 19(5), pages 1-19, May.
  • Handle: RePEc:plo:pone00:0300924
    DOI: 10.1371/journal.pone.0300924
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    References listed on IDEAS

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    1. Xiaojuan Wang & Yuntao Wei, 2022. "Optimization algorithm of CT image edge segmentation using improved convolution neural network," PLOS ONE, Public Library of Science, vol. 17(6), pages 1-17, June.
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