4.8 Article

Flat Refractive Geometry

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2011.105

关键词

Computer vision; vision and scene understanding; 3D/stereo scene analysis; camera calibration; imaging geometry

资金

  1. Taub Foundation
  2. US-Israel Binational Science Foundation (BSF) [2006384]
  3. Israeli Ministry of Science, Culture and Sport [3-3426]
  4. Ollendorff Minerva Center for Vision and Image Science
  5. BMBF
  6. US Department of the Navy [N62909-10-1-4056]
  7. CenSSIS ERC of the US National Science Foundation (NSF) [EEC-9986821]
  8. NSF [ATM-0941760]
  9. ONR [N00014-08-1-0638]
  10. Weizmann Institute of Science

向作者/读者索取更多资源

While the study of geometry has mainly concentrated on single viewpoint (SVP) cameras, there is growing attention to more general non-SVP systems. Here, we study an important class of systems that inherently have a non-SVP: a perspective camera imaging through an interface into a medium. Such systems are ubiquitous: They are common when looking into water-based environments. The paper analyzes the common flat-interface class of systems. It characterizes the locus of the viewpoints (caustic) of this class and proves that the SVP model is invalid in it. This may explain geometrical errors encountered in prior studies. Our physics-based model is parameterized by the distance of the lens from the medium interface, besides the focal length. The physical parameters are calibrated by a simple approach that can be based on a single frame. This directly determines the system geometry. The calibration is then used to compensate for modeled system distortion. Based on this model, geometrical measurements of objects are significantly more accurate than if based on an SVP model. This is demonstrated in real-world experiments. In addition, we examine by simulation the errors expected by using the SVP model. We show that when working at a constant range, the SVP model can be a good approximation.

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