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Stable reinforcement learning with autoencoders for tactile and visual data

Herke van Hoof, Nutan Chen, Maximilian Karl, Patrick van der Smagt, Jan Peters

Year
2016
Citations
142

Abstract

For many tasks, tactile or visual feedback is helpful or even crucial. However, designing controllers that take such high-dimensional feedback into account is non-trivial. Therefore, robots should be able to learn tactile skills through trial and error by using reinforcement learning algorithms. The input domain for such tasks, however, might include strongly correlated or non-relevant dimensions, making it hard to specify a suitable metric on such domains. Auto-encoders specialize in finding compact representations, where defining such a metric is likely to be easier. Therefore, we propose a reinforcement learning algorithm that can learn non-linear policies in continuous state spaces, which leverages representations learned using auto-encoders. We first evaluate this method on a simulated toy-task with visual input. Then, we validate our approach on a real-robot tactile stabilization task.

Keywords

Reinforcement learningComputer scienceTask (project management)EncoderRobotMetric (unit)Artificial intelligenceTask analysisUnsupervised learningMachine learning

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