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arxiv: 1610.06781 · v4 · pith:O5CJGXDEnew · submitted 2016-10-21 · 💻 cs.RO · cs.AI· cs.CV· cs.LG· cs.SY

Modular Deep Q Networks for Sim-to-real Transfer of Visuo-motor Policies

classification 💻 cs.RO cs.AIcs.CVcs.LGcs.SY
keywords learningdeepreal-worldrobottransferdatasetsfine-tunedlarge
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While deep learning has had significant successes in computer vision thanks to the abundance of visual data, collecting sufficiently large real-world datasets for robot learning can be costly. To increase the practicality of these techniques on real robots, we propose a modular deep reinforcement learning method capable of transferring models trained in simulation to a real-world robotic task. We introduce a bottleneck between perception and control, enabling the networks to be trained independently, but then merged and fine-tuned in an end-to-end manner to further improve hand-eye coordination. On a canonical, planar visually-guided robot reaching task a fine-tuned accuracy of 1.6 pixels is achieved, a significant improvement over naive transfer (17.5 pixels), showing the potential for more complicated and broader applications. Our method provides a technique for more efficient learning and transfer of visuo-motor policies for real robotic systems without relying entirely on large real-world robot datasets.

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