Minerals (May 2024)

High-Accuracy Image Segmentation Based on Hybrid Attention Mechanism for Sandstone Analysis

  • Lanfang Dong,
  • Hao Gui,
  • Xiaolu Yu,
  • Xinming Zhang,
  • Mingyang Xu

DOI
https://doi.org/10.3390/min14060544
Journal volume & issue
Vol. 14, no. 6
p. 544

Abstract

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Mineral image segmentation based on computer vision is vital to realize automatic mineral analysis. However, current image segmentation methods still cannot effectively solve the problem of sandstone grains that are adjoined and concealed by leaching processes, and the segmentation performance of small and irregular grains still needs to be improved. This investigation explores and designs a Mask R-CNN-based sandstone image segmentation model, including a hybrid attention mechanism, loss function construction, and receptive field enlargement. Simultaneously, we propose a high-quality sandstone dataset with abundant labels named SMISD to facilitate comprehensive training of the model. The experimental results show that the proposed segmentation model has excellent segmentation performance, effectively solving adhesion and overlap between adjacent grains without affecting the classification accuracy. The model has comparable performance to other models on the COCO dataset, and performs better on SMISD than others.

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