Evaluation of Robust Fitting Based Detection
Abstract
Low-level image processing algorithms generally provide noisy
features that are far from being Gaussian. Medium-level tasks such
as object detection must therefore be robust to outliers.
This can be achieved by means of the well-known M-estimators.
However, higher-level systems do not only need robust detection,
but also a confidence value associated to the detection. When the
detection is cast into the fitting framework, the inverse
of the covariance matrix of the fit provides a valuable
confidence matrix.
Since there is no closed-form expression of the covariance matrix
in the robust case, one must resort to some approximation.
Unfortunately, the experimental evaluation reported in this paper
on real data shows that, among the different approximations
proposed in literature that can be efficiently computed, none provides
reliable results. This leads us to study the robustness of the
covariance matrix of the fit with respect to noise model parameters.
We introduce a new non-asymptotic approximate covariance matrix
that experimentally outperforms the existing ones in terms of reliability.
Reference
@inproceedings{jpt-eccv04,
author = {Ieng, S.-S. and Tarel, J.-P. and Charbonnier, P.},
title = {Evaluation of Robust Fitting Based Detection},
booktitle = {Proceedings of European Conference on Computer Vision (ECCV'04)},
address = {Prague, Czech Republic},
volume = {II},
pages = {341-352},
date = {May 11-14},
year = {2004},
note = {http://perso.lcpc.fr/tarel.jean-philippe/publis/eccv04.html}
}
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