Visible to the public Volumetric Bias in Segmentation and Reconstruction: Secrets and Solutions

TitleVolumetric Bias in Segmentation and Reconstruction: Secrets and Solutions
Publication TypeConference Paper
Year of Publication2015
AuthorsBoykov, Y., Isack, H., Olsson, C., Ayed, I. B.
Conference Name2015 IEEE International Conference on Computer Vision (ICCV)
Date Publisheddec
Keywordsbinary optimization technique, Computational modeling, Computer vision, Entropy, Image reconstruction, image segmentation, KL divergence, maximum likelihood estimation, ML model estimates, multilabel optimization technique, optimisation, Optimization methods, probabilistic K-means energy, Probabilistic logic, probability, pubcrawl170110, reconstruction method, segmentation method, standard likelihood term, Standards, volumetric bias
Abstract

Many standard optimization methods for segmentation and reconstruction compute ML model estimates for appearance or geometry of segments, e.g. Zhu-Yuille [23], Torr [20], Chan-Vese [6], GrabCut [18], Delong et al. [8]. We observe that the standard likelihood term in these formu-lations corresponds to a generalized probabilistic K-means energy. In learning it is well known that this energy has a strong bias to clusters of equal size [11], which we express as a penalty for KL divergence from a uniform distribution of cardinalities. However, this volumetric bias has been mostly ignored in computer vision. We demonstrate signif- icant artifacts in standard segmentation and reconstruction methods due to this bias. Moreover, we propose binary and multi-label optimization techniques that either (a) remove this bias or (b) replace it by a KL divergence term for any given target volume distribution. Our general ideas apply to continuous or discrete energy formulations in segmenta- tion, stereo, and other reconstruction problems.

DOI10.1109/ICCV.2015.206
Citation Keyboykov_volumetric_2015