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Reconstruction

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Abstract

Once the geometrical data of a physical object have been sampled on its surface, the next step is the generalization of the sampled data to obtain a continuous description of the object surface, to which visual attributes (like color, textures, and reflectance) can be associated. In this chapter an overview of the techniques used for generalization is presented. These can be subdivided into two broad families: volumetric and surface fitting methods.

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Bellocchio, F., Borghese, N.A., Ferrari, S., Piuri, V. (2013). Reconstruction. In: 3D Surface Reconstruction. Springer, New York, NY. https://doi.org/10.1007/978-1-4614-5632-2_3

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