Surface modeling and analysis using range images smoothing, registration, integration, and segmentation /
Abstract (Summary)
This dissertation presents a framework for 3D reconstruction and scene analysis,
using a set of range images. The motivation for developing this framework came from
the needs to reconstruct the surfaces of small mechanical parts in reverse engineering
tasks, build a virtual environment of indoor and outdoor scenes, and understand 3D
images.
The input of the framework is a set of range images of an object or a scene captured
by range scanners. The output is a triangulated surface that can be segmented
into meaningful parts. A textured surface can be reconstructed if color images are
provided. The framework consists of surface smoothing, registration, integration, and
segmentation.
Surface smoothing eliminates the noise present in raw measurements from range
scanners. This research proposes area-decreasing flow that is theoretically identical to
the mean curvature flow. Using area-decreasing flow, there is no need to estimate the
curvature value and an optimal step size of the flow can be obtained. Crease edges and
sharp corners are preserved by an adaptive scheme.
Surface registration aligns measurements from different viewpoints in a common
coordinate system. This research proposes a new surface representation scheme named
point fingerprint. Surfaces are registered by finding corresponding point pairs in an
overlapping region based on fingerprint comparison.
Surface integration merges registered surface patches into a whole surface. This rev
search employs an implicit surface-based integration technique. The proposed algorithm
can generate watertight models by space carving or filling the holes based on volumetric
interpolation. Textures from different views are integrated inside a volumetric grid.
Surface segmentation is useful to decompose CAD models in reverse engineering
tasks and help object recognition in a 3D scene. This research proposes a watershedbased
surface mesh segmentation approach. The new algorithm accurately segments
the plateaus by geodesic erosion using fast marching method.
The performance of the framework is presented using both synthetic and real world
data from different range scanners. The dissertation concludes by summarizing the
development of the framework and then suggests future research topics.
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Bibliographical Information:
Advisor:
School:The University of Tennessee at Chattanooga
School Location:USA - Tennessee
Source Type:Master's Thesis
Keywords:
ISBN:
Date of Publication: