Report Number: CSL-TR-97-733
Institution: Stanford University, Computer Systems Laboratory
Title: New Methods for Surface Reconstruction from Range Images
Author: Curless, Brian Lee
Date: June 1997
Abstract: The digitization and reconstruction of 3D shapes has numerous
applications in areas that include manufacturing, virtual
simulation, science, medicine, and consumer marketing. In
this thesis, we address the problem of acquiring accurate
range data through optical triangulation, and we present a
method for reconstructing surfaces from sets of data known as
range images.
The standard methods for extracting range data from optical
triangulation scanners are accurate only for planar objects
of uniform reflectance. Using these methods, curved surfaces,
discontinuous surfaces, and surfaces of varying reflectance
cause systematic distortions of the range data. We present a
new ranging method based on analysis of the time evolution of
the structured light reflections. Using this spacetime
analysis, we can correct for each of these artifacts, thereby
attaining significantly higher accuracy using existing
technology. When using coherent illumination such as lasers,
however, we show that laser speckle places a fundamental
limit on accuracy for both traditional and spacetime
triangulation.
The range data acquired by 3D digitizers such as optical
triangulation scanners commonly consists of depths sampled on
a regular grid, a sample set known as a range image. A number
of techniques have been developed for reconstructing surfaces
by integrating groups of aligned range images. A desirable
set of properties for such algorithms includes: incremental
updating, representation of directional uncertainty, the
ability to fill gaps in the reconstruction, and robustness in
the presence of outliers and distortions. Prior algorithms
possess subsets of these properties. In this thesis, we
present an efficient volumetric method for merging range
images that possesses all of these properties. Using this
method, we are able to merge a large number of range images
(as many as 70) yielding seamless, high-detail models of up
to 2.6 million triangles.
http://i.stanford.edu/pub/cstr/reports/csl/tr/97/733/CSL-TR-97-733.pdf