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Neural network methods for error canceling in human-machine manipulation

机译:用于人机操作中的错误消除的神经网络方法

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A neural network technique is employed to cancel hand motion error during microsurgery. A cascade-correlation neural network trained via extended Kalman filtering was tested on 15 recordings of hand movement collected from 4 surgeons. The neural network was trained to output the surgeon's desired motion, suppressing erroneous components. In experiments this technique reduced the root mean square error (rmse) of the erroneous motion by an average of 39.5%. This was 9.6% greater than the reduction achieved in earlier work, which followed the complementary approach of estimating the error rather than the desired component. Preliminary results are also presented from tests in which training and testing data were taken from different surgeons.
机译:采用神经网络技术来消除显微外科手术中的手部运动错误。通过从4位外科医生那里收集的15条手部运动记录,对通过扩展卡尔曼滤波训练的级联相关神经网络进行了测试。经过训练的神经网络可以输出外科医生所需的动作,从而抑制错误的组件。在实验中,该技术将错误运动的均方根误差(rmse)平均降低了39.5%。这比早期工作中实现的减少幅度高9.6%,后者采用了补充方法来估计误差,而不是所需的分量。测试还提供了初步结果,这些测试中的培训和测试数据来自不同的外科医生。

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