Diverse Sampling for Normalizing Flow Based Trajectory Forecasting
- URL: http://arxiv.org/abs/2011.15084v1
- Date: Mon, 30 Nov 2020 18:23:29 GMT
- Title: Diverse Sampling for Normalizing Flow Based Trajectory Forecasting
- Authors: Yecheng Jason Ma, Jeevana Priya Inala, Dinesh Jayaraman, Osbert
Bastani
- Abstract summary: We propose Diversity Sampling for Flow (DSF) to improve the quality and diversity of trajectory samples from a pre-trained flow model.
DSF is easy to implement, and we show that it offers a simple plug-in improvement for several existing flow-based forecasting models.
- Score: 34.01303881881315
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: For autonomous cars to drive safely and effectively, they must anticipate the
stochastic future trajectories of other agents in the scene, such as
pedestrians and other cars. Forecasting such complex multi-modal distributions
requires powerful probabilistic approaches. Normalizing flows have recently
emerged as an attractive tool to model such distributions. However, when
generating trajectory predictions from a flow model, a key drawback is that
independent samples often do not adequately capture all the modes in the
underlying distribution. We propose Diversity Sampling for Flow (DSF), a method
for improving the quality and the diversity of trajectory samples from a
pre-trained flow model. Rather than producing individual samples, DSF produces
a set of trajectories in one shot. Given a pre-trained forecasting flow model,
we train DSF using gradients from the model, to optimize an objective function
that rewards high likelihood for individual trajectories in the predicted set,
together with high spatial separation between trajectories. DSF is easy to
implement, and we show that it offers a simple plug-in improvement for several
existing flow-based forecasting models, achieving state-of-art results on two
challenging vehicle and pedestrian forecasting benchmarks.
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