Title of article :
Detecting grain boundaries in deformed rocks using a cellular automata approach
Author/Authors :
Gorsevski، نويسنده , , Pece V. and Onasch، نويسنده , , Charles M. and Farver، نويسنده , , John R. and Ye، نويسنده , , Xinyue، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
Cellular automata (CA) are widely used in geospatial dynamic modeling and image processing. Here, we explore the application of two-dimensional cellular automata to the problem of grain boundary detection and extraction in digital images of thin sections from deformed rocks. The automated extraction of boundaries, which contain rich sources of information such as shape, orientation, and spatial distribution of grains, involves a CA Mooreʹs neighborhood-based rules approach. The Mooreʹs neighborhood is a 3×3 matrix that is used for changing states by comparing differences between a central pixel and its neighbors. In this dynamic approach, the future state of a pixel depends upon its current state and that of its neighbors. The rules that are defined determine the future state of each cell (i.e., on or off) while the number of iterations to simulate boundaries detection are specified by the user. Each iteration outputs different detection scenarios of grain boundaries that can be evaluated and assessed for accuracy. For a deformed quartz arenite, an r2 of 0.724 was obtained by comparing manually digitized grains to model derived grains. The value of this proposed method is compared against a traditional manual digitization approach and a recent GIS-based method developed for this purpose by Li et al. (2007).
Keywords :
Edge detection , Grain boundary , Cellular automata , GIS , Thin section
Journal title :
Computers & Geosciences
Journal title :
Computers & Geosciences