Automated Grain-Matrix Segmentation in Photomicrographs of Clastic Sedimentary Rocks using Neuro-visual Algorithms
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Date
2025-06-11
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Indian Statistical Institute, Kolkata
Abstract
Sediments and sedimentary rocks, covering almost sixty-five percent of exposed earth’s
surface, contain features that allow us to interpret ancient depositional environments, and
their role in the evolution of life on earth. Study of sedimentary rocks is also relevant to
exploration of geo-economic resources including petroleum, ore minerals, and groundwater
as well as research in environmental geology, anthropological studies, and the bi-directional
relation of man and environment. One of the important and crucial steps in this study of the
detrital sedimentary rocks like sandstone, is to know the size and shape of the grains/clasts
(fragments of different minerals or rocks), and the character of the fine-grained matrix
(usually clay sized material or chemical precipitates), that surround the individual clasts.
Geologists generally use a petrographic microscope to distinguish and study the clasts and
the matrix. Traditionally the identified grains/clasts are demonstrated by the geologist on a
photomicrograph of the thin section captured on a polarizing microscope. The images contain
hundreds of grains/clasts of different sizes and characters. The manual delineation and
identification of such grains is extremely time-consuming and tedious. Often the grain
boundaries are hazy and almost overlapping, and their exact delineation is highly subjective
at places. Therefore, the machine vision and image analysis techniques for grain
segmentation from the matrix, and for the measurement of other properties of these grains,
appear to be one of the potential tools. Yet, until now, to the best of our knowledge no robust
general solution for that has been drawn. Also, for applying state-of-art algorithms in the
domain to check their validity in grain-matrix separation is impossible as no generic dataset
for this is available at present. In this regard, the present thesis builds a dataset of
photomicrographs captured under a petrographic microscope of a thin section of rock
samples, and their corresponding ground truths in collaboration with the geologists. This dataset consists of two views, the plane polarized (PPL) view observed under a single
polarizer and the cross polarized (XPL) view when the analyzer is inserted as well. Three
different approaches in computer vision have been adopted in this thesis to solve the
above-mentioned grain-matrix segmentation problem relying upon the concept of mimicking
the geologist’s eye on the petrographic microscope from various perspectives. The first of
these, uses separate spatial filters for three commonly applied modes of vision viz. Vision
applying Strong Contrast (VSC), Vision at a Glance (VG), and Vision with Scrutiny (VS). For
this, a psychophysics based receptive field model is combined with a clustering algorithm for
figure-ground segregation of the XPL images. The second approach employs a Laplacian of
Gaussian filter based mid-level vision model for automated segmentation of the XPL images.
It adaptively combines VG and VSC filters mentioned above and ends up with a filter termed
as Vision with Adaptive Scrutiny (VAS). The third approach is a Linknet inspired Deep
Semantic Grain Segmentation Network that takes cues not only from XPL, but also the PPL
image, much like what is often actually done while using the microscope. This is compared
with state-of-the-art deep neural networks (itself inspired by visual cortical processing) for
image segmentation. The results have been quantitatively analyzed using suitable metrics.
The thesis demonstrates that computer vision algorithms, especially the neuro-visually
inspired ones, including deep neural nets, have a high potential in automating the difficult
problem of grain segmentation from the photomicrographs of clastic sedimentary rocks.
Description
Keywords
Sedimentary rocks, Sandstone Photomicrograph, Automatic Grain-Matrix Segmentation, Deep learning based semantic segmentation, Grain segmentation, Optical mineralogy, Petrology, Grain-matrix, Brightness-contrast, K-means++ clustering, Beta index.
Citation
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