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arxiv 2010.06740 v2 pith:NVSZEEZZ submitted 2020-10-13 cs.LG cs.AIcs.CVcs.RO

Measuring Visual Generalization in Continuous Control from Pixels

classification cs.LG cs.AIcs.CVcs.RO
keywords visualcontinuouscontrolgeneralizationlearningagentsaugmentationbenchmark
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Self-supervised learning and data augmentation have significantly reduced the performance gap between state and image-based reinforcement learning agents in continuous control tasks. However, it is still unclear whether current techniques can face a variety of visual conditions required by real-world environments. We propose a challenging benchmark that tests agents' visual generalization by adding graphical variety to existing continuous control domains. Our empirical analysis shows that current methods struggle to generalize across a diverse set of visual changes, and we examine the specific factors of variation that make these tasks difficult. We find that data augmentation techniques outperform self-supervised learning approaches and that more significant image transformations provide better visual generalization \footnote{The benchmark and our augmented actor-critic implementation are open-sourced @ https://github.com/QData/dmc_remastered)

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    MTCL learns multi-scale temporal correlations in videos via contrastive learning to produce more informative representations that improve sample efficiency and performance in downstream RL tasks.