High Resolution Image Correspondences for Video Post-Production

Authors

  • Christian Lipski TU Braunschweig
  • Christian Linz TU Braunschweig
  • Thomas Neumann Hochschule für Technik und Wirtschaft Dresden (FH)
  • Markus Wacker Hochschule für Technik und Wirtschaft Dresden (FH)
  • Marcus Magnor TU Braunschweig

DOI:

https://doi.org/10.20385/1860-2037/9.2012.8

Keywords:

Belief Propagation, Dense Image Correspondences, Depth Reconstruction, Optical Flow, Video Post-Production

Abstract

We present an algorithm for estimating dense image correspondences. Our versatile approach lends itself to various tasks typical for video post-processing, including image morphing, optical flow estimation, stereo rectification, disparity/depth reconstruction, and baseline adjustment. We incorporate recent advances in feature matching, energy minimization, stereo vision, and data clustering into our approach. At the core of our correspondence estimation we use Efficient Belief Propagation for energy minimization. While state-of-the-art algorithms only work on thumbnail-sized images, our novel feature downsampling scheme in combination with a simple, yet efficient data term compression, can cope with high-resolution data. The incorporation of SIFT (Scale-Invariant Feature Transform) features into data term computation further resolves matching ambiguities, making long-range correspondence estimation possible. We detect occluded areas by evaluating the correspondence symmetry, we further apply Geodesic matting to automatically determine plausible values in these regions.
Cover page of article 9.2012.8

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Published

2012-12-28

Issue

Section

CVMP 2010