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Interactive Editing and Automatic Evaluation of Direct Volume Rendered Images
PhD Thesis Proposal Defence Title: "Interactive Editing and Automatic Evaluation of Direct Volume Rendered Images" by Mr. Yingcai Wu Abstract: The volume datasets from real applications such as medical imaging and computational fluid dynamics often contain multiple sophisticated structures. Because of the occlusion of 3D objects, revealing all these structures and their 3D spatial relations simultaneously is very challenging. Direct Volume Rendering is a powerful volume visualization method which allows users to visually explore the volume datasets in a highly flexible manner. Despite the powerful capability of direct volume rendering for exploring volume data, its inherent complexity of specifying rendering parameters often results in a tedious and non-intuitive visualization process. In addition, because of its complicated ray casting and compositing process, its results (i.e., Direct Volume Rendered Images) usually contain some misleading information such as artifacts and depth ambiguity, which makes the visualization unreliable and ineffective for volume exploration. In this thesis proposal, we present three methods for improving the intuitiveness and effectiveness of direct volume rendering as follows. 1). An editing framework for direct volume rendered images, allowing users to interactively explore complex volumetric datasets by directly editing direct volume rendered images. Users can intuitively fuse multiple features in distinct direct volume rendered images, remove any feature from a direct volume rendered image, or blend two direct volume rendered images. 2). A palette-style volume visualization method, which can automatically store and systematically organize intermediate results created during a volume visualization process, such that users can locate their desired results quickly and generate a new result based on the editing framework. Moreover, users can always keep aware of what they have explored so far and so exploration redundancy can be significantly reduced. 3). A set of quantitative effectiveness measures, i.e., distinguishability, edge consistency, contour clarity, and depth coherence measures, to evaluate the effectiveness of a direct volume rendered image or a whole visualization process from different perspectives. The quantified effectiveness can be provided to users at different levels of detail, such that users can be informed when misleading or ambiguous information is introduced in a visualization process. With these three proposed methods, a comprehensive volume visualization system has been developed, enabling users to interactively editing, intuitively organizing, and effectively evaluating direct volume rendered images. Date: Friday, 29 May 2009 Time: 4:00pm-6:00pm Venue: Room 3405 lifts 17-18 Committee Members: Dr. Huamin Qu (Supervisor) Dr. Pedro Sander (Chairperson) Dr. Albert Chung Dr. Chi-Keung Tang **** ALL are Welcome ****