Title of article :
Using image analysis and ArcGIS® to improve automatic grain boundary detection and quantify geological images
Author/Authors :
DeVasto، نويسنده , , Michael A. and Czeck، نويسنده , , Dyanna M. and Bhattacharyya، نويسنده , , Prajukti، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
Geological images, such as photos and photomicrographs of rocks, are commonly used as supportive evidence to indicate geological processes. A limiting factor to quantifying images is the digitization process; therefore, image analysis has remained largely qualitative. ArcGIS®, the most widely used Geographic Information System (GIS) available, is capable of an array of functions including building models capable of digitizing images. We expanded upon a previously designed model built using Arc ModelBuilder® to quantify photomicrographs and scanned images of thin sections.
er to enhance grain boundary detection, but limit computer processing and hard drive space, we utilized a preprocessing image analysis technique such that only a single image is used in the digitizing model. Preprocessing allows the model to accurately digitize grain boundaries with fewer images and requires less user intervention by using batch processing in image analysis software and ArcCatalog®.
sent case studies for five basic textural analyses using a semi-automated digitized image and quantified in ArcMap®. Grain Size Distributions, Shape Preferred Orientations, Weak phase connections (networking), and Nearest Neighbor statistics are presented in a simplified fashion for further analyses directly obtainable from the automated digitizing method. Finally, we discuss the ramifications for incorporating this method into geological image analyses.
Keywords :
Image analysis , detection , Grain boundary , Digitization , ArcGIS®
Journal title :
Computers & Geosciences
Journal title :
Computers & Geosciences