An adversarial optimization approach to efficient outlier removal

  • Authors:
  • Jin Yu;Anders Eriksson; Tat-Jun Chin;David Suter

  • Affiliations:
  • The Australian Centre for Visual Technologies, The University of Adelaide, South Australia, Australia;The Australian Centre for Visual Technologies, The University of Adelaide, South Australia, Australia;The Australian Centre for Visual Technologies, The University of Adelaide, South Australia, Australia;The Australian Centre for Visual Technologies, The University of Adelaide, South Australia, Australia

  • Venue:
  • ICCV '11 Proceedings of the 2011 International Conference on Computer Vision
  • Year:
  • 2011

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Abstract

This paper proposes a novel adversarial optimization approach to efficient outlier removal in computer vision. We characterize the outlier removal problem as a game that involves two players of conflicting interests, namely, optimizer and outlier. Such an adversarial view not only brings new insights into various existing methods, but also gives rise to a general optimization framework that provably unifies them. Under the proposed framework, we develop a new outlier removal approach that is able to offer a much needed control over the trade-off between reliability and speed, which is otherwise not available in previous methods. The proposed approach is driven by a mixed-integer minmax (convex-concave) optimization process. Although a minmax problem is generally not amenable to efficient optimization, we show that for some commonly used vision objective functions, an equivalent Linear Program reformulation exists. We demonstrate our method on two representative multiview geometry problems. Experiments on real image data illustrate superior practical performance of our method over recent techniques.