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4 months ago

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

Apratim Bhattacharyya; Bernt Schiele; Mario Fritz

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

Abstract

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.

Code Repositories

Benchmarks

BenchmarkMethodologyMetrics
human-pose-forecasting-on-human36mBoM
ADE: 448
APD: 6265
FDE: 533
MMADE: 514
MMFDE: 544
human-pose-forecasting-on-humaneva-iBoM
ADE@2000ms: 271
APD@2000ms: 2846
FDE@2000ms: 279

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