Visual Odometry (VO) is the process of estimating an agent’s motion relative to a reference frame by observing a sequence of images of its environment.
For every , we compute the transformation based on images and .
The VO pipeline is:
flowchart TD
A[Image Sequence] --> B[Feature Detection]
B --> C[Feature Matching]
B -->D[Feature Tracking]
C --> E[Motion Estimation]
D -->E
E --> F[Local Optimisation]
Bundle adjustment can be used as an optimisation to reduce drift by tracking features over multiple images and adjusting errors accordingly.