9/02/2011

Stereo Feature Tracking for visual odometry (document)




Created Date : 2011.2
Reference :
Robust and efficient stereo feature tracking for visual odometry
stereo odometry - a review of approaches
multiple view geometry




How to get 3D point when we know feature image points of right and left camera?
How to propagate error? if we get the 3D point that calculated including stereo distance error.
If we know translated two 3D point, How to optimize error of R, T?
This document introduces about these problems.


- contents -

① Stereo Image Point :
Left Image Image
Camera Parameters :
Focal Length f, Principal point , Baseline B
Homogeneous Point
,
Non-Homogeneous Coordinate
-(stereo odometry A Review of Approaches)
ing in Stereo Navigation L. Matthies
Noise Propagation
X point Gaussian
Mean , Covariance
X Point(3D) mean, covariance ?
f is nonlinear function of a random vector with mean , covariance
② 3D point Covariance
~ Multiple view Geometry Nonlinear Error Forward propagation
③ Estimation of motion parameters
3D points ,
X:before motion, i-th:interest point, Y:after motion
Unique solution
(X, Y will be disturbed by same amount of noise)
Mean square error
Becomes minimal?
Several solutions.
- A solution based a singular value decomposition.
- A solution based on Essential Matrix.
- A maximum likelihood solution.
④ Maximum likelihood solution


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If you have good idea or advanced opinion, please reply me. Thank you
(Please understand my bad english ability. If you point out my mistake, I would correct pleasurably. Thank you!!)

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μŠ€ν…Œλ ˆμ˜€ μΉ΄λ©”λΌμ—μ„œ νŠΉμ • 점에 λŒ€ν•œ μ™Όμͺ½ μ˜μƒμ—μ„œ x,y점 였λ₯Έμͺ½ μ˜μƒμ—μ„œ x,y점 을 μ•Œλ•Œ 3D pointλ₯Ό μ–΄λ–»κ²Œ κ΅¬ν• κΉŒ?
3D을 κ΅¬ν–ˆμ„λ•Œ μŠ€ν…Œλ ˆμ˜€ μ˜μƒμ—μ„œ ν¬ν•¨λœ μ—λŸ¬κ°€ 3D point에 μ—λŸ¬κ°€ μ–΄λ–»κ²Œ μ „νŒŒλ κΉŒ?
μ΄λ™λœ 두 3D pointκ°€ μΌμ„λ•Œ μ–΄λ–»κ²Œ ν•˜λ©΄ μ—λŸ¬λ₯Ό μ΅œμ†Œν™”ν•˜λŠ” R, Tλ₯Ό κ΅¬ν• μˆ˜ μžˆμ„κΉŒ?
이런 μ§ˆλ¬Έλ“€μ— λŒ€ν•œ λ‚΄μš©μ— λŒ€ν•œ μ†”λ£¨μ…˜μ„ 닀룬닀.


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쒋은 μ˜κ²¬μ΄λ‚˜ λ‹΅λ³€ 남겨 μ£Όμ„Έμš”.

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