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Multiview Radial Catadioptric Imaging for Scene Capture

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Title: Multiview Radial Catadioptric Imaging for Scene Capture


1
Multiview Radial Catadioptric Imaging for Scene
Capture
Sujit Kuthirummal Shree K. Nayar
Columbia University
SIGGRAPH Conference July 2006, Boston, USA
Supported by NSF
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Multiview Radial Catadioptric Imaging
Multiview Radial Catadioptric Imaging
Cameras Viewpoint
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Multiview Radial Catadioptric Imaging
Virtual Viewpoint 1
Cameras Viewpoint
Virtual Viewpoint 2
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Multiview Radial Catadioptric Imaging
Virtual Viewpoint 1
Cameras Viewpoint
Virtual Viewpoint 2
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Multiview Radial Catadioptric Imaging
Circular Viewpoint Locus
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Captured Image
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Captured Image
Captured Image
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Captured Image
Captured Image
Epipolar Lines are Radial
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Catadioptric Systems in Graphics
  • Several catadioptric systems have been proposed
  • Dana 2001, Han et al 2003, Unger et al
    2003, Levoy et al 2004, Hawkins et al 2005, etc
  • Most designed for a specific application
  • We propose a family of catadioptric imaging
    systems
  • Specific members are suited for different
    applications

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Characterizing a Radial Imaging System
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Family of Radial Imaging Systems
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Characterizing a Radial Imaging System
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Properties of Radial Imaging Systems
  • Virtual Viewpoint Locus
  • Fields of View
  • Resolution Characteristics

Locus Radius
Locus Distance
Real Viewpoint
Virtual Viewpoint
Radial
Tangential
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Properties of Radial Imaging Systems
  • Virtual Viewpoint Locus
  • Fields of View
  • Resolution Characteristics

Locus Radius
Locus Distance
Real Viewpoint
Virtual Viewpoint
Radial
Tangential
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Properties of Radial Imaging Systems
  • Virtual Viewpoint Locus
  • Fields of View
  • Resolution Characteristics

Locus Radius
Locus Distance
Real Viewpoint
Virtual Viewpoint
Radial
Tangential
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Properties of Radial Imaging Systems
  • Virtual Viewpoint Locus
  • Fields of View
  • Resolution Characteristics

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Applications
  • Reconstructing 3D Objects
  • Reconstructing 3D Textures
  • BRDF Sampling
  • Complete Texture Maps
  • Complete Object Geometry

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Applications
  • Reconstructing 3D Objects
  • BRDF Estimation
  • Complete Texture and Object Geometry

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Reconstructing 3D Objects
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Reconstructing 3D Objects
Viewpoint Locus
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Reconstructing 3D Objects
Binocular
Trinocular
Binocular
Field of View
Vergence
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Reconstructing 3D Objects
Binocular
Trinocular
Binocular
Vergence
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Reconstructing 3D Objects
  • Related Work
  • Nayar 1988, Southwell et al 1996, Nene et
    al 1998, Gluckman et al 1999,
  • Radial Epipolar Geometry
  • More Robust Structure Recovery

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Reconstructing Faces
Camera
Mirror
Subject
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Reconstructing Faces
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Stereo Views
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Reconstructing Faces
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Reconstructing 3D Textures
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Reconstructing 3D Textures
Viewpoint Locus
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Reconstructing 3D Textures
Binocular
Trinocular
Binocular
Field of View
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Reconstructing 3D Textures
Mirror
Object
Camera
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Reconstructing 3D Textures
Bark
Bread
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Reconstructing 3D Textures
Bark
Bread
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Synthesizing Textures
(R,G,B) Texture
(R,G,B) Texture
2D Texture Synthesis Efros et al 1999, Efros et
al 2001, Kwatra et al 2003,
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Synthesizing 3D Textures
(R,G,B,Z) Texture
(R,G,B,Z) Texture
Modified Image Quilting Efros et al 2001
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Synthesizing 3D Textures
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One Reflection
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Two Reflections
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Virtual Viewpoints 1 reflection
Virtual Viewpoints 2 reflections
n Reflections n Circular Loci of
Virtual Viewpoints
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Sampling and Estimating BRDFs
Ward 1992, Dana 2001, Han and Perlin 2003,
Hawkins et al 2005
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Sampling and Estimating BRDFs
Mirror
Sample
Camera
(4 Reflections)
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Sampling and Estimating BRDFs
Metallic Paint
Red Satin Paint
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Sampling and Estimating BRDFs
Light Direction
Normal
Specular Direction
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Sampling and Estimating BRDFs
Light Direction
Normal
Specular Direction
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Sampling and Estimating BRDFs
Light Direction
Normal
Viewing Directions
Specular Direction
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Sampling and Estimating BRDFs
Light Direction
Normal
Viewing Directions
Specular Direction
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Sampling and Estimating BRDFs
Analytic BRDF Model Oren-Nayar (Diffuse)
Torrance-Sparrow (Specular)
Metallic Paint
Red Satin Paint
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Sampling and Estimating BRDFs
Analytic BRDF Model Oren-Nayar (Diffuse)
Torrance-Sparrow (Specular)
Metallic Paint
Red Satin Paint
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Sampling and Estimating BRDFs
Red Satin Paint
Metallic Paint
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Complete Texture Maps of Convex Objects
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Complete Texture Maps of Convex Objects
Viewpoint Locus
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Complete Texture Maps of Convex Objects
Field of View
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Complete Texture Maps of Convex Objects
Field of View
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Complete Texture Maps of Convex Objects
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Complete Texture Maps of Convex Objects
Davidhazy 1987, Seitz and Kim 2002
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Complete Texture Maps of Convex Objects
Davidhazy 1987, Seitz and Kim 2002
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Complete Texture Maps of Convex Objects
Camera
Sample
Mirror
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Complete Texture Maps of Convex Objects
Conical Object
Cylindrical Object
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Complete Texture Maps of Convex Objects
Cylindrical Object
Conical Object
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Complete Geometry of Convex Objects
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Complete Geometry of Convex Objects
Farther Image
Nearer Image
Toy Head
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Complete Geometry of Convex Objects
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Resolution
  • Benefits come at the price of resolution
  • Multiple views projected on single image detector
  • Camera resolution is increasing rapidly

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Multiview Radial Catadioptric Imaging
  • Family of Imaging Systems
  • Analyzed Properties

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Reconstructing Faces
Camera
Mirror
Subject
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Reconstruction Accuracy
Plane at 40 cm Rms Error of Best Fit Plane
0.083 cm
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Reconstructing 3D Textures
Mirror
Object
Camera
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Reconstruction Accuracy
Radius of circular cross-section 3.739 cm Best
fit circles radius 3.557
cm Rms Error of Best Fit Circle 0.026 cm
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Resolution Tangential
Captured Image
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Resolution Tangential
Captured Image
Tangential Resolution is DepthDependent

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Resolution Tangential
Captured Image
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