Hanzi Wang and David Suter
Department of Electrical and Computer Systems Engineering
Monash University, Clayton Vic. 3800, Australia
Robust model fitting essentially requires the application of two estimators.
The first is an estimator for the values of the model parameters. The second
is an estimator for the scale of the noise in the (inlier) data. Indeed,
we propose two novel robust techniques: the Two-Step Scale estimator (TSSE)
and the Adaptive Scale Sample Consensus (ASSC) estimator. TSSE applies
nonparametric density estimation and density gradient estimation techniques,
to robustly estimate the scale of the inliers. The ASSC estimator combines
Random Sample Consensus (RANSAC) and TSSE: using a modified objective function
that depends upon both the number of inliers and the corresponding scale.
ASSC is very robust to discontinuous signals and data with multiple
structures, being able to tolerate more than 80% outliers. The main advantage
of ASSC over RANSAC is that prior knowledge about the scale of inliers
is not needed. ASSC can simultaneously estimate the parameters of a model
and the scale of the inliers belonging to that model. Experiments on synthetic
data show that ASSC has better robustness to heavily corrupted data than
Least Median Squares (LMedS), Residual Consensus (RESC), and Adaptive Least
K'th order Squares (ALKS).
We also apply ASSC to two fundamental computer vision tasks: range
image segmentation and robust fundamental matrix estimation. Experiments
show very promising results.
Related Publications
| H. Wang and D. Suter.
Robust Adaptive-Scale Parametric Model Estimation for Computer Vision. IEEE Trans. Pattern Analysis and Machine Inteliigence (PAMI), pages to appear, 2004. H. Wang and D. Suter.
H. Wang and D. Suter.
|