All Days 2013
DOI: 10.2523/iptc-16959-ms
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Integrating Digital Image Processing and Artificial Neural Network for Estimating Porosity from Thin Section

Abstract: Porosity estimation from thin section image using digital image processing is critical for petrography study since it gives a brief description on the 2D porosity of the sample. The standard routine uses the binarization process that converts the colour (RGB) image into a binary image using pixel value treshold. The idea is that the treshold value must accomodate all the blue regions correlate to pore and turns it into white in the resulting binary image. Errors come from mis-conversion when the matrix is conv… Show more

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Cited by 4 publications
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“…In addition, constituent fraction was also estimated by the neural network program, which in turn was needed for the further rock physics modeling task. The detailed discussion on this technique can be found in [7]. Then, should the binary image obtained, ImageJ software was used for quantification of the porosity and pore structure represented by the pore aspect ratio.…”
Section: Pore Structure Quantificationmentioning
confidence: 99%
“…In addition, constituent fraction was also estimated by the neural network program, which in turn was needed for the further rock physics modeling task. The detailed discussion on this technique can be found in [7]. Then, should the binary image obtained, ImageJ software was used for quantification of the porosity and pore structure represented by the pore aspect ratio.…”
Section: Pore Structure Quantificationmentioning
confidence: 99%