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ISRR
2005
Springer

Bias Reduction and Filter Convergence for Long Range Stereo

13 years 10 months ago
Bias Reduction and Filter Convergence for Long Range Stereo
We are concerned here with improving long range stereo by filtering image sequences. Traditionally, measurement errors from stereo camera systems have been approximated as 3-D Gaussians, where the mean is derived by triangulation and the covariance by linearized error propagation. However, there are two problems that arise when filtering such 3-D measurements. First, stereo triangulation suffers from a range dependent statistical bias; when filtering this leads to over-estimating the true range. Second, filtering 3-D measurements derived via linearized error propagation leads to apparent filter divergence; the estimator is biased to under-estimate range. To address the first issue, we examine the statistical behavior of stereo triangulation and show how to remove the bias by series expansion. The solution to the second problem is to filter with image coordinates as measurements instead of triangulated 3-D coordinates. Compared to the traditional approach, we show that bias is r...
Gabe Sibley, Larry Matthies, Gaurav S. Sukhatme
Added 28 Jun 2010
Updated 28 Jun 2010
Type Conference
Year 2005
Where ISRR
Authors Gabe Sibley, Larry Matthies, Gaurav S. Sukhatme
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