We apply stabilized inverse diffusion equations (SIDEs) to segment microscopy images of materials to aid in analysis of defects. We extend SIDE segmentation methods and demonstrate the effectiveness of our approaches to two material analysis tasks. We first develop a method to successfully isolate the textured area of a solidification defect to pixel accuracy. The second task involves utilizing multiple illuminations of the same structure of a polycrystalline alloy. Our novel approach features the fusion of data extracted from each of these images to create a composite segmentation which effectively represents all texture boundaries visible in any of the images. These two methods both propose new techniques to incorporate multiple images to produce segmentations.
Landis M. Huffman, Jeff P. Simmons, Ilya Pollak