TrackingOptimization
De Transport
The project consists in developing a framework for the systematic validation of tracking improvements.
Methodology and Tasks
- choosing an optimization approach to optimize tracking parameters based on tracking annotations (ie tracker training)
- designing a cross-validation framework on a set of annotation videos, training on each video in turn and evaluating the tracking performance on the rest
- testing the new framework with a few variations of an existing open source tracker (time permitting)
Resources
- Traffic Intelligence project: tracker and tools to load trajectories, annotations, and compute tracking performance (Measurement of Tracking Accuracy) https://bitbucket.org/Nicolas/trafficintelligence/
- NOMAD: derivative-free (black-box) optimization tool https://www.gerad.ca/nomad/Project/Home.html
- Python PythonResources
- Version control software, either Mercurial or Git, and repository on Bitbucket or Github Mercurial
- Cross-validation https://en.wikipedia.org/wiki/Cross-validation_(statistics)
- Annotated dataset: https://www.jpjodoin.com/urbantracker/dataset.html (other to come)
- Previous work:
- Dariush Ettehadieh's master's thesis http://publications.polymtl.ca/1661/
- Paper on transferability http://n.saunier.free.fr/saunier/stock/morse16transferability.pdf