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Serendipitous Offline Learning in a Neuromorphic Robot

机译:神经形态机器人的意外离线学习

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摘要

We demonstrate a hybrid neuromorphic learning paradigm that learns complex sensorimotor mappings based on a small set of hard-coded reflex behaviors. A mobile robot is first controlled by a basic set of reflexive hand-designed behaviors. All sensor data is provided via a spike-based silicon retina camera (eDVS), and all control is implemented via spiking neurons simulated on neuromorphic hardware (SpiNNaker). Given this control system, the robot is capable of simple obstacle avoidance and random exploration. To train the robot to perform more complex tasks, we observe the robot and find instances where the robot accidentally performs the desired action. Data recorded from the robot during these times is then used to update the neural control system, increasing the likelihood of the robot performing that task in the future, given a similar sensor state. As an example application of this general-purpose method of training, we demonstrate the robot learning to respond to novel sensory stimuli (a mirror) by turning right if it is present at an intersection, and otherwise turning left. In general, this system can learn arbitrary relations between sensory input and motor behavior.
机译:我们演示了一种混合型神经形态学习范例,该范例可基于一小组硬编码的反射行为来学习复杂的感觉运动映射。首先,移动机器人由一组基本的反手设计行为控制。所有传感器数据均通过基于尖峰的硅视网膜相机(eDVS)提供,所有控制均通过在神经形态硬件(SpiNNaker)上模拟的尖刺神经元来实现。有了这种控制系统,该机器人就能够轻松避开障碍物并进行随机探索。为了训练机器人执行更复杂的任务,我们观察机器人并找到机器人意外执行所需动作的实例。在这些时间从机器人记录的数据然后用于更新神经控制系统,从而在给定相似的传感器状态的情况下,增加了机器人将来执行该任务的可能性。作为这种通用训练方法的示例应用,我们演示了机器人学习如何对新颖的感官刺激(镜子)做出反应,方法是在路口处向右转,然后向左转。通常,该系统可以学习感觉输入与运动行为之间的任意关系。

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