A. A. Hahn-h and . Linsen-l, Uncertainty estimation and visualization in proababilistic segmentation, Comp. & Graph, issue.2, 2014.

A. A. Hahn-k and . Linsen-l, Uncertainty-aware ensemble of classifiers for segmenting brain mri data, VCBM, 2014.

B. A. Browet, J. L. De-vleeschouwer-c, M. N. Saykali-b, and . Migeotte-i, Cell segmentation with random ferns and graph-cuts. arXiv preprint arXiv:1602, p.5439, 2016.
DOI : 10.1101/039958

URL : http://arxiv.org/abs/1602.05439

[. , H. , J. C. Oliveira-m, R. P. Potter-k, and . Schultz-t, Overview and state-of-the-art of uncertainty visualization, Scientific Visualization, pp.3-27, 2014.

B. Y. Kolmogorov-v, An experimental comparison of min-cut/max-flow algorithms for energy minimization in vision, PAMI, vol.26, issue.2, pp.1124-1137, 2004.

Z. [. Veksler-o, Fast approximate energy minimization via graph cuts, PAMI, vol.23, issue.11 2, pp.1222-1239, 2001.

Y. [. Guzman-rivera-a and . Shakhnarovich-g, Diverse m-best solutions in markov random fields, ECCV, pp.1-16, 2012.

C. D. Birkbeck-n, J. M. Schmidt-m, and . Murtha-a, 3d variational brain tumor segmentation using a high dimensional feature set, ICCV, pp.1-8, 2007.

C. C. and C. S. Penn-g, Visualization of Uncertainty in Lattices to Support Decision-Making, In Symp. on Vis, issue.2, 2007.

L. S. Dai, D. J. Zhang-y, and C. Y. , A novel approach of lung segmentation on chest CT images using graph cuts, Neurocomputing, vol.168, issue.2, pp.799-807, 2015.
DOI : 10.1016/j.neucom.2015.05.044

]. Eea13, . E. Emblem-k, and A. Et, Vessel architectural imaging identifies cancer patient responders to anti-angiogenic therapy, Nature medicine, vol.19, issue.9 1, pp.1178-1183, 2013.

[. G. Boykov-y, . Florin-c, . Jolly-m.-p, R. R. Moreau-gobard, and R. D. , Automatic heart isolation for ct coronary visualization using graph-cuts, In ISBI, issue.2, pp.614-617, 2006.

H. S. Bullitt-e and . Gerig-g, Level-set evolution with region competition: automatic 3-d segmentation of brain tumors, ICPR, pp.532-535, 2002.

. T. Hbg-*-11-]-höllt, . Beyer-j, . Gschwantner-f, D. H. Muigg-p, . Heinemann-g et al., Interactive seismic interpretation with piecewise global energy minimization, PacificVis, pp.59-66, 2011.

. F. Hbs-*-12-]-heckel, . Braunewell-s, . Soza-g, . Titjen-c, and . Hahn-h, Sketch-based image-independent editing of 3d tumour segmentation using variational interpolation, VCBM, 2012.

M. [. Titjen-c and . Hahn-h, Sketchbased editing tools for tumour segmentation in 3d medical images, CGF, issue.2, 2013.

H. I. and P. D. Davies-r, The use of variance and entropic thresholding methods for image segmentation, 1995.

I. A. Shiloach-y, Maximum flow in planar networks, SIAM Journal on Computing, vol.8, issue.2, pp.135-150, 1979.

[. , M. J. , W. Y. Saegusa-beecroft, and M. J. Feleppa-e, A novel nested graph cuts method for segmenting human lymph nodes in 3d high frequency ultrasound images, In ISBI, issue.2, pp.372-375, 2015.

[. B. Robertson-g, C. M. Parr-c, S. Y. Li, . Tang-c.-k, and . Shum-h, Candidtree: visualizing structural uncertainty in similar hierarchies, Lazy snapping, pp.233-246, 2004.

P. K. Gerber-s and A. E. , Visualization of uncertainty without a mean, CGA, issue.2, 2013.

P. and R. T. Hinrichs-k, Uncertaintyaware guided volume segmentation, TVCG, vol.2, issue.8 10, 2010.

. [. Gooch-a, . Scorzelli-g, and . Pascucci-v, Towards Paint and Click: Unified Interactions for Image Boundaries

S. T. Kindlmann-g, Open-box spectral clustering: Applications to medical image analysis, TVCG, issue.3, 2013.

. Skk-*-12-]-straehle-c.-n, . Koethe-u, . Knott-g, D. W. Briggman-k, . A. Hamprecht-f et al., Seeded watershed cut uncertainty estimators for guided interactive segmentation Probexplorer: Uncertainty-guided exploration and editing of probabilistic medical image segmentation, CVPR, 2010.

S. M. Sankur-b, Survey over image thresholding techniques and quantitative performance evaluation, Journal of Electronic Imaging, vol.13, issue.1, 2004.
DOI : 10.1117/1.1631315

S. F. Toppe-e and C. D. , Efficient planar graph cuts with applications in computer vision, CVPR, 2009.

S. B. and T. J. Pascucci-v, Panorama weaving: fast and flexible seam processing, pp.1-83, 2012.

T. S. Ong-s and C. V. , Level-set segmentation of brain tumors using a threshold-based speed function, IVC, issue.10, 2010.

W. M. Et and A. , Gigapixel surface imaging of radical prostatectomy specimens for comprehensive detection of cancer-positive surgical margins using structured illumination microscopy, Scientific Reports, vol.6, issue.7, p.27419, 2016.

W. R. Mirzargar-m and K. R. , Contour boxplots: A method for characterizing uncertainty in feature sets from simulation ensembles, pp.2713-2722, 2013.

. J. Waggoner, . Zhou-y, S. A. Simmons-j, and W. S. De-graef-m, Interactive grain image segmentation using graph cut algorithms, Computational Imaging XI, 2013.
DOI : 10.1117/12.2014161

URL : http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.278.6090

[. K. Zou-k and W. W. , Simultaneous truth and performance level estimation (staple): an algorithm for the validation of image segmentation, pp.903-921, 2004.