/AnMtgsAbsts2009.55324 Sequential Segmentation for Correction of Intensity Bias in X-Ray CT Grayscale Images.

Monday, November 2, 2009
Convention Center, Exhibit Hall BC, Second Floor

Markus Tuller and Pavel Iassonov, Department of Soil, Water & Environmental Science, University of Arizona, Tucson, AZ
Abstract:
Nondestructive imaging methods such as X-Ray Computed Tomography (CT) yield high-resolution, grayscale, 3-D visualizations of pore structures and fluid interfaces in porous media. To separate solid and fluid phases for quantitative analysis and fluid dynamics modeling, segmentation is applied to convert grayscale CT volumes to discrete representations of media pore space. Unfortunately, X-Ray CT is not free of artifacts, which complicates segmentation and quantitative image analysis due to obscuration of significant features or misinterpretation of attenuation values of a single material in different image sections. Especially images or volumes emanating from polychromatic (industrial) scanners are prone to high noise levels, beam hardening, or scattered x-rays. These problems can be alleviated to a certain extend through application of metal filters, careful detector calibration and sample centering, but not completely avoided. We present a simple 3-D approach to numerically correct for image artifacts using sequential segmentation. The presented procedure leads to a significant improvement of grayscale data as well as final segmentation results with reasonable computational demand.