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Automatic Calibration of a Spiking Head-Direction Network for Representing Robot Orientation

机译:用于代表机器人方向的尖峰头方向网络的自动校准

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Calibration of movement tracking systems is a difficult problem faced by both animals and robots. The ability to continuously calibrate changing systems is essential for animals as they grow or are injured, and highly desirable for robot control or mapping systems due to the possibility of component wear, modification, damage and their deployment on varied robotic platforms. In this paper we use inspiration from the animal head direction tracking system to implement a self-calibrating, neurally-based robot orientation tracking system. Using real robot data we demonstrate how the system can remove tracking drift and learn to consistently track rotation over a large range of velocities. The neural tracking system provides the first steps towards a fully neural SLAM system with improved practical applicability through self-tuning and adaptation.
机译:运动跟踪系统的校准是动物和机器人面临的难题。连续校准改变系统的能力对于动物而言是必不可少的,因为它们的生长或受伤,并且由于各种机器人平台上的组件磨损,修改,损坏及其部署的可能性而受到的机器人控制或映射系统非常适望。在本文中,我们使用来自动物头部方向跟踪系统的灵感来实现自校准的神经基机器人取向跟踪系统。使用真实机器人数据我们展示系统如何去除跟踪漂移,并学会在大范围的速度范围内始终轨道旋转。神经跟踪系统通过自我调整和适应提供了朝向完全神经猛杆系统的第一步,其具有改进的实际适用性。

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