Abstract :
We introduce a novel volume illustration technique for regularly sampled volume datasets. The fundamental difference
between previous volume illustration algorithms and ours is that our results are shape-aware, as they
depend not only on the rendering styles, but also the shape styles. We propose a new data structure that is derived
from the input volume and consists of a distance volume and a segmentation volume. The distance volume is used
to reconstruct a continuous eld around the object boundary, facilitating smooth illustrations of boundaries and
silhouettes. The segmentation volume allows us to abstract or remove distracting details and noise, and apply
different rendering styles to different objects and components. We also demonstrate how to modify the shape of
illustrated objects using a new 2D curve analogy technique. This provides an interactive method for learning
shape variations from 2D hand-painted illustrations by drawing several lines. Our experiments on several volume
datasets demonstrate that the proposed approach can achieve visually appealing and shape-aware illustrations.
The feedback from medical illustrators is quite encouraging.