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Accurate modeling of images is difficult, and bootstrap can
provide the tool to reduce and/or assess the influence of a
priori assumptions.
We have employed bootstrap mostly for the quantitative assessment
of performance in image understanding tasks with real data.
Covariance matrices and confidence intervals are
computed for the estimated parameters and
individually for the corrected data points. As an example, the
proposed methodology was applied to 3D rigid motion estimation.
Older publications illustrate other applications, some
related to bootstrap only through the kinship of the paradigm.
Publications
Please use the link
"Abstract" to see the publishing history of a paper.
The links "Paper" also contain the abstract.
B. Matei, P. Meer: Bootstrapping errors-in-variables models.
Abstract Paper (pdf) Paper (ps.gz)

B. Matei, P. Meer: Optimal rigid motion estimation and performance evaluation with bootstrap.
BEST STUDENT PAPER AWARD
1999 Computer Vision and Pattern Recognition Conference.
Abstract Paper (pdf) Paper (ps.gz)

P. Meer, B. Matei, K. Cho: Input guided performance evaluation.
Abstract Paper (pdf) Paper (ps.gz)

B. Matei, P. Meer and D. Tyler: Performance assessment by resampling: Rigid motion estimators.
Abstract Paper (pdf) Paper (ps.gz)

K. Cho, P. Meer and J. Cabrera: Performance assessment through bootstrap.
Abstract
Paper (pdf)
Paper (ps.gz)

K. Cho, P. Meer: Image segmentation from consensus information.
Abstract
Paper (pdf)
Paper (ps.gz)

J. Cabrera, P. Meer: Unbiased estimation of ellipses by bootstrapping.
Abstract
Paper (pdf)
Paper (ps.gz)
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