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Application of sensory body schemas to path planning for micro air vehicles (MAVs)

机译:感觉身体模式在微型飞机(MAV)的路径规划中的应用

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To date, most autonomous micro air vehicles (MAV-s) operate in a controlled environment, where the location of and attitude of the aircraft are measured be dedicated high-power computers with IR tracking capability. If MAV-s are to ever exit the lab and carry out autonomous missions, their flight control systems needs to utilize on-board sensors and high-efficiency attitude determination algorithms. To address this need, we investigate the feasibility of using body schemas to carry out path planning in the vision space of the MAV. Body schemas are a biologically-inspired approach, emulating the plasticity of the animal brains, allowing efficient representation of non-linear mapping between the body configuration space, i.e. its generalized coordinates and the resulting sensory outputs. This paper presents a numerical experiment of generating landing trajectories of a miniature rotor-craft using the notion of body and image schemas. More specifically, we demonstrate how a trajectory planning can be executed in the image space using a pseudo-potential functions and a gradient-based maximum seeking algorithm. It is demonstrated that a neural-gas type neural network, trained through Hebbian-type learning algorithm can learn a mapping between the rotor-craft position/attitude and the output of its vision sensors. Numerical simulations of the landing performance of a physical model is also presented, The resulting trajectory tracking errors are less than 8 %.
机译:迄今为止,大多数自动微型飞行器(MAV-s)在受控环境中运行,在该环境中,飞机的位置和姿态是通过具有IR跟踪功能的专用大功率计算机来测量的。如果MAV要离开实验室并执行自主任务,则其飞行控制系统需要利用机载传感器和高效姿态确定算法。为了满足这一需求,我们研究了在MAV的视觉空间中使用人体模式进行路径规划的可行性。身体图式是一种受生物学启发的方法,可以模拟动物大脑的可塑性,从而可以有效地表示身体配置空间(即其广义坐标和所产生的感觉输出)之间的非线性映射。本文提出了一种利用人体和图像模式概念生成微型旋翼飞机着陆轨迹的数值实验。更具体地说,我们演示了如何使用伪势函数和基于梯度的最大搜索算法在图像空间中执行轨迹规划。结果表明,经过Hebbian型学习算法训练的神经气体型神经网络可以学习旋翼飞机的位置/姿态与其视觉传感器的输出之间的映射关系。还给出了物理模型着陆性能的数值模拟,所产生的轨迹跟踪误差小于8%。

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