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Neuro-Analogical Gate Tuning of Trajectory Data Fusion for a Mecanum-Wheeled Special Needs Chair

机译:麦克纳姆轮特殊需求椅子的轨迹数据融合的神经-神经门调整

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摘要

Trajectory tracking of mobile wheeled chairs using internal shaft encoder and inertia measurement unit(IMU), exhibits several complications and accumulated errors in the tracking process due to wheel slippage, offset drift and integration approximations. These errors can be realized when comparing localization results from such sensors with a camera tracking system. In long trajectory tracking, such errors can accumulate and result in significant deviations which make data from these sensors unreliable for tracking. Meanwhile the utilization of an external camera tracking system is not always a feasible solution depending on the implementation environment. This paper presents a novel sensor fusion method that combines the measurements of internal sensors to accurately predict the location of the wheeled chair in an environment. The method introduces a new analogical OR gate structured with tuned parameters using multi-layer feedforward neural network denoted as “Neuro-Analogical Gate” (NAG). The resulting system minimize any deviation error caused by the sensors, thus accurately tracking the wheeled chair location without the requirement of an external camera tracking system. The fusion methodology has been tested with a prototype Mecanum wheel-based chair, and significant improvement over tracking response, error and performance has been observed.
机译:使用内部轴编码器和惯性测量单元(IMU)跟踪移动轮椅的轨迹,由于车轮打滑,偏移漂移和积分逼近,在跟踪过程中会表现出一些复杂性和累积的误差。当将此类传感器的定位结果与相机跟踪系统进行比较时,可以实现这些错误。在长轨迹跟踪中,此类错误会累积并导致明显的偏差,从而使来自这些传感器的数据不可靠地进行跟踪。同时,根据实现环境的不同,使用外部摄像机跟踪系统并不总是可行的解决方案。本文提出了一种新颖的传感器融合方法,该方法结合了内部传感器的测量结果以准确预测环境中带轮椅子的位置。该方法使用多层前馈神经网络(称为“神经模拟门”(NAG))引入了一种由调整后的参数构成的新类比或门。最终的系统将由传感器引起的任何偏差误差降至最低,从而无需外部摄像机跟踪系统即可准确跟踪轮椅的位置。融合方法已经用原型的基于Mecanum轮椅的座椅进行了测试,并且观察到跟踪响应,误差和性能方面的显着改善。

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