Pintus R., Gobbetti E., Callieri M.
Streaming Computer Science Applications Point clouds Conservation Information Systems Texture blending Computer Graphics and Computer-Aided Design Photo blending Massive models
We present an efficient scalable streaming technique for mapping highly detailed color information on extremely dense point clouds. Our method does not require meshing or extensive processing of the input model, works on a coarsely spatially reordered point stream, and can adaptively refine point cloud geometry on the basis of image content. Seamless multiband image blending is obtained by using GPU-accelerated screen-space operators, which solve point set visibility, compute a per-pixel view-dependent weight, and ensure a smooth weighting function over each input image. The proposed approach works independently on each image in a memory-coherent manner, and can be easily extended to include further image-quality estimators. The effectiveness of the method is demonstrated on a series of massive real-world point datasets. © 2011 ACM.
Source: ACM journal on computing and cultural heritage (Print) 4 (2011). doi:10.1145/2037820.2037823
Publisher: Association for Computing Machinery, New York, NY , Stati Uniti d'America
@article{oai:it.cnr:prodotti:400285, title = {Fast low-memory seamless photo blending on massive point clouds using a streaming framework}, author = {Pintus R. and Gobbetti E. and Callieri M.}, publisher = {Association for Computing Machinery, New York, NY , Stati Uniti d'America}, doi = {10.1145/2037820.2037823}, journal = {ACM journal on computing and cultural heritage (Print)}, volume = {4}, year = {2011} }
Journal on Computing and Cultural Heritage
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