Form of presentation | Articles in international journals and collections |
Year of publication | 2023 |
Язык | английский |
|
Akhmetov Radik Fanusovich, author
Kayumov Zufar Damirovich, author
Kolchugin Anton Nikolaevich, author
Morozov Vladimir Petrovich, author
Murtazin Timur Aleksandrovich, author
Nurgaliev Danis Karlovich, author
Sudakov Vladislav Anatolevich, author
Tumakov Dmitriy Nikolaevich, author
|
Bibliographic description in the original language |
Timur Murtazin, Zufar Kayumov, Vladimir Morozov, Radik Akhmetov, Anton Kolchugin, Dmitrii Tumakov, Danis Nurgaliev, Vladislav Sudakov; HIGH-PRECISION ALGORITHM FOR GRAIN SEGMENTATION OF THIN SECTIONS BY MULTI-ANGLE OPTICAL-MICROSCOPIC IMAGES. Journal of Sedimentary Research 2023;; 93 (12): 932–944. doi: https://doi.org/10.2110/jsr.2022.096 |
Annotation |
This paper introduces an algorithm for automating the analysis of petrographic thin-section images of sandstones and siltstones. The images of thin sections are obtained in polarized light at magnifications providing good image quality. In addition, the images for each section are obtained at different angles of rotation of the microscope stage. Augmentation is applied to the obtained photographs: the number of images increases due to rotations, shifts, and rescaling of the image. For training the neural network of the Mask R-CNN architecture, transfer learning is used, with initial weights obtained from a huge variety of nongeological images. The results of image segmentation using Mask R-CNN are compared to the Watershed algorithm results and the U-Net network for two metrics. According to the standard Intersection over Union metric, U-Net for high-quality images and Watershed for blurry images show the best results with a slight superiority. However, according to the Grain Size Metric, which evaluates the accuracy of grain-size measurement, the best accuracy (over 95%) is shown by Mask R-CNN. The grain-size analysis is done, and the porosity of the studied petrographic sections is determined. The use of the proposed approaches in the study of thin sections will significantly reduce the time for obtaining the results of grain-size-distribution analysis and porosity determination.
This article is the result of multidisciplinary collaboration between geologists and programmers. This has allowed for the merging of profound knowledge in the field of geology with cutting-edge data processing technologies. By employing the presented methodology, geologists can devote more time to interpreting results rather than obtaining them, which in turn enhances the efficiency of research work. The benefits of using this methodology are not limited to just speeding up the process: it also allows for increased accuracy and reliability of the analysis, minimizing human error. |
Keywords |
Grain segmentation, Thin section, Petrographic microscopic images, Deep learning
Mask R-CNN
|
The name of the journal |
Journal of Sedimentary Research
|
URL |
https://pubs.geoscienceworld.org/sepm/jsedres/article-abstract/93/12/932/628766/HIGH-PRECISION-ALGORITHM-FOR-GRAIN-SEGMENTATION-OF?redirectedFrom=fulltext |
Please use this ID to quote from or refer to the card |
https://repository.kpfu.ru/eng/?p_id=294544&p_lang=2 |
Full metadata record |
Field DC |
Value |
Language |
dc.contributor.author |
Akhmetov Radik Fanusovich |
ru_RU |
dc.contributor.author |
Kayumov Zufar Damirovich |
ru_RU |
dc.contributor.author |
Kolchugin Anton Nikolaevich |
ru_RU |
dc.contributor.author |
Morozov Vladimir Petrovich |
ru_RU |
dc.contributor.author |
Murtazin Timur Aleksandrovich |
ru_RU |
dc.contributor.author |
Nurgaliev Danis Karlovich |
ru_RU |
dc.contributor.author |
Sudakov Vladislav Anatolevich |
ru_RU |
dc.contributor.author |
Tumakov Dmitriy Nikolaevich |
ru_RU |
dc.date.accessioned |
2023-01-01T00:00:00Z |
ru_RU |
dc.date.available |
2023-01-01T00:00:00Z |
ru_RU |
dc.date.issued |
2023 |
ru_RU |
dc.identifier.citation |
Timur Murtazin, Zufar Kayumov, Vladimir Morozov, Radik Akhmetov, Anton Kolchugin, Dmitrii Tumakov, Danis Nurgaliev, Vladislav Sudakov; HIGH-PRECISION ALGORITHM FOR GRAIN SEGMENTATION OF THIN SECTIONS BY MULTI-ANGLE OPTICAL-MICROSCOPIC IMAGES. Journal of Sedimentary Research 2023;; 93 (12): 932–944. doi: https://doi.org/10.2110/jsr.2022.096 |
ru_RU |
dc.identifier.uri |
https://repository.kpfu.ru/eng/?p_id=294544&p_lang=2 |
ru_RU |
dc.description.abstract |
Journal of Sedimentary Research |
ru_RU |
dc.description.abstract |
This paper introduces an algorithm for automating the analysis of petrographic thin-section images of sandstones and siltstones. The images of thin sections are obtained in polarized light at magnifications providing good image quality. In addition, the images for each section are obtained at different angles of rotation of the microscope stage. Augmentation is applied to the obtained photographs: the number of images increases due to rotations, shifts, and rescaling of the image. For training the neural network of the Mask R-CNN architecture, transfer learning is used, with initial weights obtained from a huge variety of nongeological images. The results of image segmentation using Mask R-CNN are compared to the Watershed algorithm results and the U-Net network for two metrics. According to the standard Intersection over Union metric, U-Net for high-quality images and Watershed for blurry images show the best results with a slight superiority. However, according to the Grain Size Metric, which evaluates the accuracy of grain-size measurement, the best accuracy (over 95%) is shown by Mask R-CNN. The grain-size analysis is done, and the porosity of the studied petrographic sections is determined. The use of the proposed approaches in the study of thin sections will significantly reduce the time for obtaining the results of grain-size-distribution analysis and porosity determination.
This article is the result of multidisciplinary collaboration between geologists and programmers. This has allowed for the merging of profound knowledge in the field of geology with cutting-edge data processing technologies. By employing the presented methodology, geologists can devote more time to interpreting results rather than obtaining them, which in turn enhances the efficiency of research work. The benefits of using this methodology are not limited to just speeding up the process: it also allows for increased accuracy and reliability of the analysis, minimizing human error. |
ru_RU |
dc.language.iso |
ru |
ru_RU |
dc.subject |
Grain segmentation |
ru_RU |
dc.subject |
Thin section |
ru_RU |
dc.subject |
Petrographic microscopic images |
ru_RU |
dc.subject |
Deep learning
Mask R-CNN
|
ru_RU |
dc.title |
HIGH-PRECISION ALGORITHM FOR GRAIN SEGMENTATION OF THIN SECTIONS BY MULTI-ANGLE OPTICAL-MICROSCOPIC IMAGES. |
ru_RU |
dc.type |
Articles in international journals and collections |
ru_RU |
|