1. What are the contributions mentioned in the paper "Robust parameter estimation in computer vision∗" ?
In computer vision applications, robust estimation techniques have been used to estimate accurate model parameters despite small-scale noise in the data, occasional largescale measurement errors ( outliers ), and measurements from multiple populations in the same data set this paper.
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![Fig. 6 A pair of images and some of the epipolar lines resulting from the robust fundamental matrix technique of [82]. Points numbered are correspondences. Nonrobust estimation results in substantial skewing of these lines and the position of the epipole. Reprinted from Artificial Intelligence 78, Z. Zhang, R. Deriche, O. Faugeras, and Q. Luong, A Robust Technique for Matching Two Uncalibrated Images through the Recovery of the Unknown Epipolar Geometry, 1995, pp. 87–119, with permission from Elsevier Science.](/figures/fig-6-a-pair-of-images-and-some-of-the-epipolar-lines-ymhyw5v2.png)
