No abstract
Figure 1: Visualization of sampling strategies (white pixels show a subset of the actual samples, missed geometry is marked red). Left: An urban input scene and a view cell (in yellow) for visibility sampling. Middle: Previous visibility sampling algorithms repeatedly sample the same triangles in the foreground while missing many smaller triangles and distant geometry. Right: Our solution is guided by scene visibility and therefore quickly finds most visible triangles while requiring drastically fewer samples than previous methods. AbstractThis paper addresses the problem of computing the triangles visible from a region in space. The proposed aggressive visibility solution is based on stochastic ray shooting and can take any triangular model as input. We do not rely on connectivity information, volumetric occluders, or the availability of large occluders, and can therefore process any given input scene. The proposed algorithm is practically memoryless, thereby alleviating the large memory consumption problems prevalent in several previous algorithms. The strategy of our algorithm is to use ray mutations in ray space to cast rays that are likely to sample new triangles. Our algorithm improves the sampling efficiency of previous work by over two orders of magnitude.
Abstract-In this paper we present an algorithm that operates on a triangular mesh and classifies each face of a triangle as either inside or outside. We present three example applications of this core algorithm: normal orientation, inside removal, and layer-based visualization. The distinguishing feature of our algorithm is its robustness even if a difficult input model that includes holes, coplanar triangles, intersecting triangles, and lost connectivity is given. Our algorithm works with the original triangles of the input model and uses sampling to construct a visibility graph that is then segmented using graph cut.
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