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MACHINE LEARNING METHODS AND APPARATUS FOR ROBOTIC MANIPULATION AND THAT UTILIZE MULTI-TASK DOMAIN ADAPTATION

机译:机器人操纵并利用多任务域自适应的机器学习方法和装置

摘要

Training a machine learning model that, once trained, is used in performance of robotic grasping and/or other manipulation task(s) by a robot. The model can be trained using simulated training examples that are based on simulated data that is based on simulated robot(s) attempting simulated manipulations of various simulated objects. At least portions of the model can also be trained based on real training examples that are based on data from real-world physical robots attempting manipulations of various objects. The simulated training examples can be utilized to train the model to predict an output that can be utilized in a particular task – and the real training examples used to adapt at least a portion of the model to the real-world domain can be tailored to a distinct task. In some implementations, domain-adversarial similarity losses are determined during training, and utilized to regularize at least portion(s) of the model.
机译:训练机器学习模型,该模型一旦被训练,就被用于执行机器人的抓握和/或其他操纵任务。可以使用基于模拟数据的模拟训练示例来训练模型,该模拟数据基于模拟机器人对各种模拟对象进行模拟操作的模拟机器人。还可以基于真实的训练示例来训练模型的至少一部分,该真实的训练示例基于来自尝试操作各种对象的真实世界的物理机器人的数据。模拟的训练示例可用于训练模型,以预测可用于特定任务的输出–且可将用于使模型的至少一部分适应现实世界的真实训练示例进行定制。不同的任务。在一些实施方式中,在训练期间确定域对抗相似性损失,并将其用于规范化模型的至少一部分。

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