This paper considers the problem of automatic classification of textured tissues in 3D MRI. More specifically, it aims at
validating the use of features extracted from the phase of the MR signal to improve texture discrimination in bone segmentation.
This extra information provides better segmentation, compared to using magnitude only features. We also present a novel multiscale
scheme to improve the speed of pixel based classification algorithm, such as support vector machines. This algorithm dramatically
increases the speed of the segmentation process by an order of magnitude through a reduction of the number of pixels that
needs to be classified in the image.