Volumetric Bias in Segmentation and Reconstruction: Secrets and Solutions
Title | Volumetric Bias in Segmentation and Reconstruction: Secrets and Solutions |
Publication Type | Conference Paper |
Year of Publication | 2015 |
Authors | Boykov, Y., Isack, H., Olsson, C., Ayed, I. B. |
Conference Name | 2015 IEEE International Conference on Computer Vision (ICCV) |
Date Published | dec |
Keywords | binary 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. |
DOI | 10.1109/ICCV.2015.206 |
Citation Key | boykov_volumetric_2015 |
- optimisation
- volumetric bias
- standards
- standard likelihood term
- segmentation method
- reconstruction method
- pubcrawl170110
- probability
- Probabilistic logic
- probabilistic K-means energy
- Optimization methods
- binary optimization technique
- multilabel optimization technique
- ML model estimates
- maximum likelihood estimation
- KL divergence
- image segmentation
- Image reconstruction
- Entropy
- computer vision
- Computational modeling