Unsupervised Sampling Promoting for Stochastic Human Trajectory
Prediction
- URL: http://arxiv.org/abs/2304.04298v1
- Date: Sun, 9 Apr 2023 19:15:14 GMT
- Title: Unsupervised Sampling Promoting for Stochastic Human Trajectory
Prediction
- Authors: Guangyi Chen, Zhenhao Chen, Shunxing Fan, Kun Zhang
- Abstract summary: We propose a novel method, called BOsampler, to adaptively mine potential paths with Bayesian optimization in an unsupervised manner.
Specifically, we model the trajectory sampling as a Gaussian process and construct an acquisition function to measure the potential sampling value.
This acquisition function applies the original distribution as prior and encourages exploring paths in the long-tail region.
- Score: 10.717921532244613
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The indeterminate nature of human motion requires trajectory prediction
systems to use a probabilistic model to formulate the multi-modality phenomenon
and infer a finite set of future trajectories. However, the inference processes
of most existing methods rely on Monte Carlo random sampling, which is
insufficient to cover the realistic paths with finite samples, due to the long
tail effect of the predicted distribution. To promote the sampling process of
stochastic prediction, we propose a novel method, called BOsampler, to
adaptively mine potential paths with Bayesian optimization in an unsupervised
manner, as a sequential design strategy in which new prediction is dependent on
the previously drawn samples. Specifically, we model the trajectory sampling as
a Gaussian process and construct an acquisition function to measure the
potential sampling value. This acquisition function applies the original
distribution as prior and encourages exploring paths in the long-tail region.
This sampling method can be integrated with existing stochastic predictive
models without retraining. Experimental results on various baseline methods
demonstrate the effectiveness of our method.
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