1996 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'96)
3-D Scene Data Recovery using Omnidirectional Multibaseline Stereo
San Francisco, Ca.
June 18-June 20
ISBN: 0-8186-7258-7
A traditional approach to extracting geometric information from a large scene is to compute multiple 3-D depth maps from stereo pairs or direct range finders, and then to merge the 3-D data. This is not only computationally intensive, but the resulting merged depth maps may be subject to merging errors, especially if the relative poses between depth maps are not known exactly. The 3-D data may also have to be resampled before merging, which adds additional complexity and potential sources of errors. This paper provides a means of directly extracting 3-D data covering a very wide field of view, thus by-passing the need for numerous depth map merging. In our work, cylindrical images are first composited from sequences of images taken while the camera is rotated 360 degrees about a vertical axis. By taking such image panoramas at different camera locations, we can recover 3-D data of the scene using a set of simple techniques: feature tracking, an 8-point structure from motion algorithm, and multibaseline stereo. We also investigate the effect of median filtering on the recovered 3-D point distributions, and show the results of our approach applied to both synthetic and real scenes.
Index Terms:
Omnidirectional multibaseline stereo, 8-point algorithm, image compositing, 3-D modeling
Citation:
Sing Bing Kang, Richard Szeliski, "3-D Scene Data Recovery using Omnidirectional Multibaseline Stereo," cvpr, pp.364, 1996 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'96), 1996