Accurate and Diverse Sampling of Sequences based on a "Best of Many" Sample Objective

20 Jun 2018  ·  Apratim Bhattacharyya, Bernt Schiele, Mario Fritz ·

For autonomous agents to successfully operate in the real world, anticipation of future events and states of their environment is a key competence. This problem has been formalized as a sequence extrapolation problem, where a number of observations are used to predict the sequence into the future. Real-world scenarios demand a model of uncertainty of such predictions, as predictions become increasingly uncertain -- in particular on long time horizons. While impressive results have been shown on point estimates, scenarios that induce multi-modal distributions over future sequences remain challenging. Our work addresses these challenges in a Gaussian Latent Variable model for sequence prediction. Our core contribution is a "Best of Many" sample objective that leads to more accurate and more diverse predictions that better capture the true variations in real-world sequence data. Beyond our analysis of improved model fit, our models also empirically outperform prior work on three diverse tasks ranging from traffic scenes to weather data.

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Task Dataset Model Metric Name Metric Value Rank Source Paper Compare
Human Pose Forecasting Human3.6M BoM APD 6265 # 10
ADE 448 # 6
FDE 533 # 6
MMADE 514 # 6
MMFDE 544 # 6
Human Pose Forecasting HumanEva-I BoM APD@2000ms 2846 # 6
ADE@2000ms 271 # 6
FDE@2000ms 279 # 5

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