Back to square one: probabilistic trajectory forecasting without bells and whistles
About
We introduce a spatio-temporal convolutional neural network model for trajectory forecasting from visual sources. Applied in an auto-regressive way it provides an explicit probability distribution over continuations of a given initial trajectory segment. We discuss it in relation to (more complicated) existing work and report on experiments on two standard datasets for trajectory forecasting: MNISTseq and Stanford Drones, achieving results on-par with or better than previous methods.
Ehsan Pajouheshgar, Christoph H. Lampert• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Trajectory Prediction | Stanford Drone (5-fold cross val) | Error @ 1sec0.7 | 8 |
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