| Title |
Image-based porosity estimation in Cambrian sandstones from the Vilkyčiai-22 well |
| Authors |
Talibov, Nurlan ; Kaminskas, Donatas ; Cichon-Pupienis, Anna Katarzyna |
| DOI |
10.5194/egusphere-egu26-3317 |
| Full Text |
|
| Is Part of |
EGU General Assembly 2026, 3–8 May 2026, Vienna, Austria & Online : abstract.. Göttingen : Copernicus GmbH. 2026, art. no. EGU26-3317, p. [1] |
| Abstract [eng] |
This study focused on the evaluation and comparison of three image-based techniques for pore-space segmentation in Cambrian sandstones from the Baltic Basin: ImageJ thresholding, QuPath thresholding, and a U-Net convolutional neural network. Core samples from a borehole in Western Lithuania were obtained from the Lithuanian Geological Survey storage facility. Conventional epoxy-impregnated thin sections were scanned using a petrographic microscope equipped with a digital camera to acquire high-resolution images.In QuPath, images were pre-processed and segmented using fixed-threshold pixel classification, followed by visual inspection and manual adjustment to produce validated masks used for U-Net training. ImageJ analysis involved a median filter, conversion to grayscale, automatic thresholding, and binary mask generation. Porosity estimates derived from each method were compared with laboratory-measured core-plug porosity.The mean absolute error (MAE) relative to laboratory porosity was 3.88% for QuPath, 3.91% for U-Net, and 4.25% for ImageJ. Threshold-based methods performed well in samples with uniform pore–mineral contrast but tended to underestimate pore space where contrast was heterogeneous or pore geometries were complex. The U-Net model more consistently detected smaller and disconnected pores, however, its overall MAE was similar to that of QuPath, reflecting its reliance on threshold-derived training masks.The results demonstrate that manually validated threshold-based segmentations can serve as effective training data for deep-learning models, enabling reproducible pore-scale characterization of Cambrian sandstones where fully annotated datasets are limited. |
| Published |
Göttingen : Copernicus GmbH |
| Type |
Conference paper |
| Language |
English |
| Publication date |
2026 |
| CC license |
|