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Context-Based Filtering for Assisted Brain-Actuated Wheelchair Driving

机译:基于上下文的辅助脑动轮椅驾驶过滤

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Controlling a robotic device by using human brain signals is an interesting and challenging task. The device may be complicated to control and the nonstationary nature of the brain signals provides for a rather unstable input. With the use of intelligent processing algorithms adapted to the task at hand, however, the performance can be increased. This paper introduces a shared control system that helps the subject in driving an intelligent wheelchair with a noninvasive brain interface. The subject's steering intentions are estimated from electroencephalogram (EEG) signals and passed through to the shared control system before being sent to the wheelchair motors. Experimental results show a possibility for significant improvement in the overall driving performance when using the shared control system compared to driving without it. These results have been obtained with 2 healthy subjects during their first day of training with the brain-actuated wheelchair.
机译:通过使用人脑信号控制机器人设备是一项有趣且具有挑战性的任务。该设备的控制可能很复杂,并且大脑信号的非平稳性质会导致相当不稳定的输入。但是,通过使用适合于当前任务的智能处理算法,可以提高性能。本文介绍了一种共享控制系统,该系统可帮助受试者驾驶具有无创性大脑接口的智能轮椅。根据脑电图(EEG)信号估算对象的转向意图,然后将其传递到共享控制系统,然后再发送给轮椅电动机。实验结果表明,与不使用共享控制系统进行驾驶相比,使用共享控制系统可显着改善总体驾驶性能。这些结果是在两名健康受试者使用脑动轮椅进行训练的第一天获得的。

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