Dynamic and hierarchical multi-structure geometric model fitting

  • Authors:
  • Hoi Sim Wong;Tat-Jun Chin;Jin Yu;David Suter

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

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

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Abstract

The ability to generate good model hypotheses is instrumental to accurate and robust geometric model fitting. We present a novel dynamic hypothesis generation algorithm for robust fitting of multiple structures. Underpinning our method is a fast guided sampling scheme enabled by analysing correlation of preferences induced by data and hypothesis residuals. Our method progressively accumulates evidence in the search space, and uses the information to dynamically (1) identify outliers, (2) filter unpromising hypotheses, and (3) bias the sampling for active discovery of multiple structures in the data -- All achieved without sacrificing the speed associated with sampling-based methods. Our algorithm yields a disproportionately higher number of good hypotheses among the sampling outcomes, i.e., most hypotheses correspond to the genuine structures in the data. This directly supports a novel hierarchical model fitting algorithm that elicits the underlying stratified manner in which the structures are organized, allowing more meaningful results than traditional "flat" multi-structure fitting.