Creating Procedural Window Building Blocks Using the Generative Fact Labeling Method
نویسندگان
چکیده
The generative surface reconstruction problem can be stated like this: Given a finite collection of 3D shapes, create a small set of functions that can be combined to generate the given shapes procedurally. We propose generative fact labeling (GFL) as an attempt to organize the iterative process of shape analysis and shape synthesis in a systematic way. We present our results for the reconstruction of complex windows of neo-classical buildings in Graz, followed by a critical discussion of the limitations of the approach. Figure 1: Reasons for the complexity of window modeling. Intricacies of facade composition (left), vertical coherence (middle), and horizontal coherence (right) between ajacent windows.
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