We focus on the class of 'regular' models defined by Varady et al. for reverse engineering purposes. Given a 3D surface M represented through a dense set of points, we present a novel algorithm that converts M to a hierarchical representation HM. In HM, the surface is encoded through patches of various shape and size, which form a hierarchical atlas. If M belongs to the class of regular models, then HM captures the most significant features of M at all the levels of detail. In this case, we show that HM can be exploited to interactively select regions of interest onMand intuitively re-design the model. Furthermore, HM intrinsically encodes a hierarchy of useful 'segmentations' of M. We present a simple though efficient approach to extract and optimize such segmentations, and we show how they can be used to approximate the input point sets through idealized manifold meshes.

Hierarchical Structure Recovery of Point-Sampled Surfaces

M Attene;
2010

Abstract

We focus on the class of 'regular' models defined by Varady et al. for reverse engineering purposes. Given a 3D surface M represented through a dense set of points, we present a novel algorithm that converts M to a hierarchical representation HM. In HM, the surface is encoded through patches of various shape and size, which form a hierarchical atlas. If M belongs to the class of regular models, then HM captures the most significant features of M at all the levels of detail. In this case, we show that HM can be exploited to interactively select regions of interest onMand intuitively re-design the model. Furthermore, HM intrinsically encodes a hierarchy of useful 'segmentations' of M. We present a simple though efficient approach to extract and optimize such segmentations, and we show how they can be used to approximate the input point sets through idealized manifold meshes.
2010
Istituto di Matematica Applicata e Tecnologie Informatiche - IMATI -
hierarchical clustering
segmentation
shape primitives
selection
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/40793
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