资源论文Robust Computer Vision through Kernel Density Estimation

Robust Computer Vision through Kernel Density Estimation

2020-03-23 | |  49 |   35 |   0

Abstract

Two new techniques based on nonparametric estimation of probabil- ity densities are introduced which improve on the performance of equivalent ro- bust methods currently employed in computer vision. The first technique draws from the projection pursuit paradigm in statistics, and carries out regression M- estimation with a weak dependence on the accuracy of the scale estimate. The second technique exploits the properties of the multivariate adaptive mean shift, and accomplishes the fusion of uncertain measurements arising from an unknown number of sources. As an example, the two techniques are extensively used in an algorithm for the recovery of multiple structures from heavily corrupted data.

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