Article ID Journal Published Year Pages File Type
526248 Computer Vision and Image Understanding 2011 15 Pages PDF
Abstract

This paper presents an algorithm-independent geometrical analysis of the behavior of differential Structure from Motion (SFM) algorithms when there are errors in intrinsic parameters of the camera. We demonstrate both analytically and in simulation how uncertainty in the calibration parameters gets propagated to motion estimates in a differential setting. In particular, we studied how erroneous focal length and principal point estimates affect the behavior of the bas-relief ambiguity and introduce additional biasing to the translation estimate in a non-simple manner not revealed by previous analyses. Our formulation allows us to characterize the influence of various factors such as different scene-motion configurations and field of views in an analytically tractable manner. Guidelines are given as to whether one should err on the low or the high side in the estimation of the focal length depending on various operating conditions such as the feature density and the noise level. Simulations with synthetic data and real images were conducted to support our findings.

Research highlights►Carrying out a geometrical, algorithm-independent analysis of the differential SFM cost function with some errors in the calibration parameters, and in particular, showing how uncertainties in the calibration parameters get propagated to the egomotion estimates. ►Showing how errors in both focal length and principal point estimates affect the behavior of the bas-relief ambiguity and introduce additional biasing to the translation estimate in a non-simple manner. ►Obtaining an approximate bound to the maximum amount of bias in the translation estimate. ►Characterizing the influence of various factors such as different scene-motion configurations and field of views in an analytically tractable manner.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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