Nothing Special   »   [go: up one dir, main page]

skip to main content
10.1145/3512353.3512361acmotherconferencesArticle/Chapter ViewAbstractPublication PagesapitConference Proceedingsconference-collections
research-article

Multi-level Efficient Perception Network for Grain's Edge Detection of Cross-polarized Petrographic Images

Published: 14 March 2022 Publication History

Abstract

The edge detection of mineral grains in petrographic images is the first step of the analysis of petrographic images, which provides cues about the grain's size, shape, and composition. The challenge of automatic methods lies in the ambiguous edges of adjacent grains, as well as the various colors and intensities of grain under different circumstances. In this paper, a multi-level efficient perception network (MLEP) for the grain edge detection of cross-polarized petrographic images is proposed to address the above problem. The multi-angle inputs fusion block (MAIF) takes advantage of sequential petrographic images to generate edge-enhanced features, followed by the modified EfficientNetV2 and the proposed BiDecoder to obtain an affluent and hierarchal representation of edge features. The cross-polarized petrographic image datasets, named CPPID, are generated and carefully annotated. The proposed MLEP is tested on CPPID and achieves 0.888 F1-scores. Experimental results demonstrate the effectiveness of the proposed model, which outperforms four classical CNN-based edge detection models by a large margin.

References

[1]
Lumbreras, F., & Serrat, J. Segmentation of petrographical images of marbles. Computers & Geosciences, 22, 5 (1996), 547-558.
[2]
Goodchild, J. S., & Fueten, F. Edge detection in petrographic images using the rotating polarizer stage. Computers & Geosciences, 24, 8 (1998), 745-751.
[3]
Zhou, Y., Starkey, J., & Mansinha, L. Identification of mineral grains in a petrographic thin section using phi-and max-images. Mathematical geology, 36, 7 (2004), 781-801.
[4]
Fueten, F., & Mason, J. An artificial neural net assisted approach to editing edges in petrographic images collected with the rotating polarizer stage. Computers & Geosciences, 33, 9 (2007), 1176-1188.
[5]
Izadi, H., Sadri, J., & Mehran, N. A. A new intelligent method for minerals segmentation in thin sections based on a novel incremental color clustering. Computers & geosciences, 81 (2015), 38-52.
[6]
Jiang, F., Gu, Q., Hau, H., & Li, N. Grain segmentation of multi-angle petrographic thin section microscopic images. In 2017 IEEE International Conference on Image Processing (ICIP). (2017, September), 3879-3883
[7]
Jiang, F., Gu, Q., Hao, H., Li, N., Wang, B., & Hu, X. A method for automatic grain segmentation of multi-angle cross-polarized microscopic images of sandstone. Computers & Geosciences, 115 (2018), 143-153.
[8]
Jungmann, M., Pape, H., Wißkirchen, P., Clauser, C., & Berlage, T. Segmentation of thin section images for grain size analysis using region competition and edge-weighted region merging. Computers & Geosciences, 72 (2014), 33-48.
[9]
Rubo, R. A., de Carvalho Carneiro, C., Michelon, M. F., & dos Santos Gioria, R. Digital petrography: Mineralogy and porosity identification using machine learning algorithms in petrographic thin section images. Journal of Petroleum Science and Engineering, 183 (2019), 106-382.
[10]
Tang, D. G., Milliken, K. L., & Spikes, K. T. Machine learning for point counting and segmentation of arenite in thin section. Marine and Petroleum Geology, 120 (2020), 104-518.
[11]
Saxena, N., Day-Stirrat, R. J., Hows, A., & Hofmann, R. Application of deep learning for semantic segmentation of sandstone thin sections. Computers & Geosciences, 152 (2021), 104-778.
[12]
Xie, S., & Tu, Z. Holistically-nested edge detection. In Proceedings of the IEEE international conference on computer vision. (2015), 1395-1403.
[13]
Liu, Y., Cheng, M. M., Hu, X., Wang, K., & Bai, X. (2017). Richer convolutional features for edge detection. In Proceedings of the IEEE conference on computer vision and pattern recognition. (2017), 3000-3009.
[14]
He, J., Zhang, S., Yang, M., Shan, Y., & Huang, T. Bi-directional cascade network for perceptual edge detection. In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition. (2019), 3828-3837.
[15]
Poma, X. S., Riba, E., & Sappa, A. Dense extreme inception network: Towards a robust cnn model for edge detection. In Proceedings of the IEEE/CVF Winter Conference on Applications of Computer Vision. (2020), 1923-1932.
[16]
Howard, A. G., Zhu, M., Chen, B., Kalenichenko, D., Wang, W., Weyand, T., ... & Adam, H. Mobilenets: Efficient convolutional neural networks for mobile vision applications. arXiv preprint arXiv:1704.04861 (2017).
[17]
Tan, M., & Le, Q. V. Efficientnetv2: Smaller models and faster training. arXiv preprint arXiv:2104.00298 (2021).
[18]
Long, J., Shelhamer, E., & Darrell, T. Fully convolutional networks for semantic segmentation. In Proceedings of the IEEE conference on computer vision and pattern recognition. (2015), 3431-3440.
[19]
Ronneberger, O., Fischer, P., & Brox, T. U-net: Convolutional networks for biomedical image segmentation. In International Conference on Medical image computing and computer-assisted intervention. (2015, October), 234-241.
[20]
Chen, L. C., Papandreou, G., Kokkinos, I., Murphy, K., & Yuille, A. L. Deeplab: Semantic image segmentation with deep convolutional nets, atrous convolution, and fully connected crfs. IEEE transactions on pattern analysis and machine intelligence, 40, 4 (2017), 834-848.
[21]
Hu, J., Shen, L., & Sun, G. Squeeze-and-excitation networks. In Proceedings of the IEEE conference on computer vision and pattern recognition (2018), 7132-7141.
[22]
Manoj Kumar Singh, Image Reconstruction and Edge Detection based upon Neural Approximation Characteristics. Journal of Image and Graphics, 1, 1 (2013), 12-16.
[23]
Yuexiang Li, Siu-Yeung Cho and John Crowe, A Hybrid Edge Detection Method for Cell Images Based on Fuzzy Entropy and the Canny Operator. Journal of Image and Graphics, 2, 2 (2014): 135-139.

Recommendations

Comments

Please enable JavaScript to view thecomments powered by Disqus.

Information & Contributors

Information

Published In

cover image ACM Other conferences
APIT '22: Proceedings of the 2022 4th Asia Pacific Information Technology Conference
January 2022
239 pages
ISBN:9781450395571
DOI:10.1145/3512353
Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

Publisher

Association for Computing Machinery

New York, NY, United States

Publication History

Published: 14 March 2022

Permissions

Request permissions for this article.

Check for updates

Author Tags

  1. Convolutional Neural Network
  2. Edge Detection
  3. Petrographic Images

Qualifiers

  • Research-article
  • Research
  • Refereed limited

Funding Sources

Conference

APIT 2022
APIT 2022: 2022 4th Asia Pacific Information Technology Conference
January 14 - 16, 2022
Virtual Event, Thailand

Contributors

Other Metrics

Bibliometrics & Citations

Bibliometrics

Article Metrics

  • 0
    Total Citations
  • 63
    Total Downloads
  • Downloads (Last 12 months)8
  • Downloads (Last 6 weeks)0
Reflects downloads up to 18 Nov 2024

Other Metrics

Citations

View Options

Login options

View options

PDF

View or Download as a PDF file.

PDF

eReader

View online with eReader.

eReader

HTML Format

View this article in HTML Format.

HTML Format

Media

Figures

Other

Tables

Share

Share

Share this Publication link

Share on social media