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Learning diffeomorphism models of robotic sensorimotor cascades

机译:学习机器人感觉运动级联的微分模型

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The problem of bootstrapping consists in designing agents that can learn from scratch the model of their sensorimotor cascade (the series of robot actuators, the external world, and the robot sensors) and use it to achieve useful tasks. In principle, we would want to design agents that can work for any robot dynamics and any robot sensor(s). One of the difficulties of this problem is the fact that the observations are very high dimensional, the dynamics is nonlinear, and there is a wide range of “representation nuisances” to which we would want the agent to be robust. In this paper, we model the dynamics of sensorimotor cascades using diffeomorphisms of the sensel space. We show that this model captures the dynamics of camera and range-finder data, that it can be used for long-term predictions, and that it can capture nonlinear phenomena such as a limited field of view. Moreover, by analyzing the learned diffeomorphisms it is possible to recover the “linear structure” of the dynamics independently of the commands representation.
机译:自举的问题在于设计代理程序,这些代理程序可以从头开始学习其感应电机级联模型(一系列机器人致动器,外部世界和机器人传感器),并使用它来完成有用的任务。原则上,我们希望设计可适用于任何机器人动力学和机器人传感器的代理。这个问题的困难之一是这样的事实,即观测值的维数很高,动力学是非线性的,并且我们希望代理具有强大的鲁棒性。在本文中,我们使用感官空间的亚纯性对感觉运动级联动力学进行建模。我们表明,该模型可以捕获相机和测距仪数据的动态,可以用于长期预测,并且可以捕获非线性现象,例如有限的视野。此外,通过分析学习到的亚同性,可以独立于命令表示来恢复动力学的“线性结构”。

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