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arxiv: 1710.06422 · v2 · pith:QKBD7HD2new · submitted 2017-10-17 · 💻 cs.LG · cs.AI· cs.CV· cs.RO

Multi-Task Domain Adaptation for Deep Learning of Instance Grasping from Simulation

classification 💻 cs.LG cs.AIcs.CVcs.RO
keywords graspinginstancemodelsimulationadaptationdatadomainexperiments
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Learning-based approaches to robotic manipulation are limited by the scalability of data collection and accessibility of labels. In this paper, we present a multi-task domain adaptation framework for instance grasping in cluttered scenes by utilizing simulated robot experiments. Our neural network takes monocular RGB images and the instance segmentation mask of a specified target object as inputs, and predicts the probability of successfully grasping the specified object for each candidate motor command. The proposed transfer learning framework trains a model for instance grasping in simulation and uses a domain-adversarial loss to transfer the trained model to real robots using indiscriminate grasping data, which is available both in simulation and the real world. We evaluate our model in real-world robot experiments, comparing it with alternative model architectures as well as an indiscriminate grasping baseline.

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