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Reconstructing depth from 2D images

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Title: Reconstructing depth from 2D images


1
Reconstructing depth from 2D images
  • Author Alexei Masterov
  • Professor Tony Jebara

2
Organization
  • Goal
  • Motivation
  • Roadmap
  • Preliminary Results
  • References

3
Goal
Learn to reconstruct depth from 2D data. Use SVM
regression to learn z f (neighborhood of z).
4
Motivation
  • Humans are able to reconstruct distance even with
    1 eye
  • Still images contain pictorial cues
  • a. Interposition
  • b. Relative height
  • c. Relative size
  • d. Linear perspective
  • e. Texture Gradient
  • f. Shadow
  • g. Blurring
  • I am hoping to learn those cues from the input
    dataset.

5
Roadmap
  • Acquire the dataset Arrange 3D models into
    scenes using AliasWavefront Maya.
  • Preprocess the dataset produce the pairs of 2D
    rendered images and Z-Depth maps of those scenes
  • Program the converter to prepare the input data
    for use with MySvm
  • Learn the regression using MySvm using different
    parameters
  • Try different preprocessing techniques such as 2D
    fft in log polar coordinates, and edge detection.
  • Acquire real world data of natural scenes using
    laser scanner and high resolution photo camera,
    and try the derived algorithm on it.
  • Package the learned SVM into a program, so that
    it can be used to reconstruct depth from
    photographs.

6
MySVM (by Stefan Rüping)
  • Kernels
  • a. dot
  • b. polynomial
  • c. RBF
  • d. two layered neural net tanh(a xyb)
  • e. (RBF) anova kernel

7
Preliminary Results (1)
8
Preliminary Results (2)
Edge Image
61 x 61 Squares
9
Preliminary Results (3)
10
References
  • Discriminative Random Fields A Discriminative
    Framework for Contextual Interaction in
    Classification. Sanjiv Kumar, Martial Hebert.
  • Mixtures of Eigenfeatures for Real-Time
    Structure from Texture T. Jebara, K. Russell and
    A. Pentland.
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