The Garden of Forking Paths: Towards Multi-Future Trajectory Prediction

CVPR(2020)

引用 159|浏览646
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摘要
This paper studies the problem of predicting the distribution over multiple possible future paths of people as they move through various visual scenes. We make two main contributions. The first contribution is a new dataset, created in a realistic 3D simulator, which is based on real world trajectory data, and then extrapolated by human annotators to achieve different latent goals. This provides the first benchmark for quantitative evaluation of the models to predict multi-future trajectories. The second contribution is a new model to generate multiple plausible future trajectories, which contains novel designs of using multi-scale location encodings and convolutional RNNs over graphs. We refer to our model as Multiverse. We show that our model achieves the best results on our dataset, as well as on the real-world VIRAT/ActEV dataset (which just contains one possible future). We will release our data, models and code.
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关键词
human annotators,quantitative evaluation,multifuture trajectories,multiple plausible future trajectories,multiscale location encodings,forking paths,multifuture trajectory prediction,visual scenes,realistic 3D simulator,convolutional RNNs
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