Publication | Closed Access
Multiview Geometry for Texture Mapping 2D Images Onto 3D Range Data
78
Citations
34
References
2006
Year
Unknown Venue
Multiview GeometryEngineeringGeometryPoint Cloud ProcessingDense 3DAutomated RegistrationPoint Cloud3D Computer VisionImage AnalysisComputational ImagingComputational GeometryGeometric ModelingMachine VisionImages Onto 3DRange ImagingComputer Vision3D VisionTexture Mapping 2DNatural SciencesExtended Reality3D ReconstructionMulti-view Geometry
The photorealistic modeling of large-scale scenes, such as urban structures, requires a fusion of range sensing technology and traditional digital photography. This paper presents a system that integrates multiview geometry and automated 3D registration techniques for texture mapping 2D images onto 3D range data. The 3D range scans and the 2D photographs are respectively used to generate a pair of 3D models of the scene. The first model consists of a dense 3D point cloud, produced by using a 3D-to-3D registration method that matches 3D lines in the range images. The second model consists of a sparse 3D point cloud, produced by applying a multiview geometry (structure-from-motion) algorithm directly on a sequence of 2D photographs. This paper introduces a novel algorithm for automatically recovering the rotation, scale, and translation that best aligns the dense and sparse models. This alignment is necessary to enable the photographs to be optimally texture mapped onto the dense model. The contribution of this work is that it merges the benefits of multiview geometry with automated registration of 3D range scans to produce photorealistic models with minimal human interaction. We present results from experiments in large-scale urban scenes.
| Year | Citations | |
|---|---|---|
Page 1
Page 1