Critic Sequential Monte Carlo
About
We introduce CriticSMC, a new algorithm for planning as inference built from a composition of sequential Monte Carlo with learned Soft-Q function heuristic factors. These heuristic factors, obtained from parametric approximations of the marginal likelihood ahead, more effectively guide SMC towards the desired target distribution, which is particularly helpful for planning in environments with hard constraints placed sparsely in time. Compared with previous work, we modify the placement of such heuristic factors, which allows us to cheaply propose and evaluate large numbers of putative action particles, greatly increasing inference and planning efficiency. CriticSMC is compatible with informative priors, whose density function need not be known, and can be used as a model-free control algorithm. Our experiments on collision avoidance in a high-dimensional simulated driving task show that CriticSMC significantly reduces collision rates at a low computational cost while maintaining realism and diversity of driving behaviors across vehicles and environment scenarios.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Trajectory Prediction | INTERACTION DR_DEU_Roundabout_OF | Collision Rate0.08 | 4 | |
| Trajectory Prediction | INTERACTION DR_USA_Intersection_MA 2019 | Collision Rate (%)0.09 | 4 | |
| Trajectory Prediction | INTERACTION DR_USA_Roundabout_FT | Collision Rate0.07 | 4 | |
| Trajectory Prediction | INTERACTION DR_DEU_Merging_MT 2019 (val) | Collision Rate1.03 | 4 |