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Goal-directed navigation based on path integration and decoding of grid cells in an artificial neural network

机译:人工神经网络中基于路径融合和网格单元解码的目标导向导航

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As neuroscience gradually uncovers how the brain represents and computes with high-level spatial information, the endeavor of constructing biologically-inspired robot controllers using these spatial representations has become viable. Grid cells are particularly interesting in this regard, as they are thought to provide a general coordinate system of space. Artificial neural network models of grid cells show the ability to perform path integration, but important for a robot is also the ability to calculate the direction from the current location, as indicated by the path integrator, to a remembered goal. This paper presents a neural system that integrates networks of path integrating grid cells with a grid cell decoding mechanism. The decoding mechanism detects differences between multi-scale grid cell representations of the present location and the goal, in order to calculate a goal-direction signal for the robot. The model successfully guides a simulated agent to its goal, showing promise for implementing the system on a real robot in the future.
机译:随着神经科学逐渐发现大脑如何利用高级空间信息进行表示和计算,使用这些空间表示构建具有生物灵感的机器人控制器的努力已变得可行。网格单元在这方面特别有趣,因为网格单元被认为提供了空间的一般坐标系。网格单元的人工神经网络模型显示了执行路径积分的能力,但对机器人而言,重要的是能够计算从当前位置(如路径积分器指示)到记忆目标的方向。本文提出了一种神经系统,该系统将带有网格单元的路径集成网络与网格单元解码机制集成在一起。解码机制检测当前位置和目标的多尺度网格像元表示之间的差异,以便为机器人计算目标方向信号。该模型成功地将模拟代理引导至其目标,显示了将来在真实机器人上实施该系统的希望。

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