On complementing end-to-end human behavior predictors with planning
Robotics: Science and Systems, 2021 High capacity end-to-end approaches for human motion (behavior) prediction have the ability to represent subtle nuances in human behavior, but struggle with robustness to out of distribution inputs and tail events. Planning-based prediction, on the other hand, can...
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Zusammenfassung: | Robotics: Science and Systems, 2021 High capacity end-to-end approaches for human motion (behavior) prediction
have the ability to represent subtle nuances in human behavior, but struggle
with robustness to out of distribution inputs and tail events. Planning-based
prediction, on the other hand, can reliably output decent-but-not-great
predictions: it is much more stable in the face of distribution shift (as we
verify in this work), but it has high inductive bias, missing important aspects
that drive human decisions, and ignoring cognitive biases that make human
behavior suboptimal. In this work, we analyze one family of approaches that
strive to get the best of both worlds: use the end-to-end predictor on common
cases, but do not rely on it for tail events / out-of-distribution inputs --
switch to the planning-based predictor there. We contribute an analysis of
different approaches for detecting when to make this switch, using an
autonomous driving domain. We find that promising approaches based on
ensembling or generative modeling of the training distribution might not be
reliable, but that there very simple methods which can perform surprisingly
well -- including training a classifier to pick up on tell-tale issues in
predicted trajectories. |
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DOI: | 10.48550/arxiv.2103.05661 |