Feature Tracks are not Zero-Mean Gaussian
Computer Vision and Pattern Recognition
2023-03-28 v1 Robotics
Abstract
In state estimation algorithms that use feature tracks as input, it is customary to assume that the errors in feature track positions are zero-mean Gaussian. Using a combination of calibrated camera intrinsics, ground-truth camera pose, and depth images, it is possible to compute ground-truth positions for feature tracks extracted using an image processing algorithm. We find that feature track errors are not zero-mean Gaussian and that the distribution of errors is conditional on the type of motion, the speed of motion, and the image processing algorithm used to extract the tracks.
Keywords
Cite
@article{arxiv.2303.14315,
title = {Feature Tracks are not Zero-Mean Gaussian},
author = {Stephanie Tsuei and Wenjie Mo and Stefano Soatto},
journal= {arXiv preprint arXiv:2303.14315},
year = {2023}
}