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Calibration of 6 axis force/torque sensor by using deep-learning method

机译:使用深学习方法校准6轴力/扭矩传感器

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The force/torque sensor is a important tool that gives a robot an ability to interact with environments. Calibration is essential for these force/torque sensors to convert the raw sensor values to accurate forces and torques. However, in practice, the multi-axis force/torque sensor requires complex multi-step data processing, because of the coupling effects and nonlinearity of sensors. Moreover, accuracy is not guaranteed. To solve this problem, we propose an accurate force/torque sensor calibration method that can calibrate the sensor in single step by using deep-learning algorithm, and introduce the method for modeling the DNN(deep neural network) used in this calibration process. In addition, we verify the calibration results through several experiments.
机译:力/扭矩传感器是一个重要的工具,它为机器人提供了与环境交互的能力。校准对于这些力/扭矩传感器至关重要,以将原始传感器值转换为精确的力和扭矩。然而,在实践中,多轴力/扭矩传感器由于传感器的耦合效应和非线性而需要复杂的多步数据处理。此外,不保证准确性。为了解决这个问题,我们提出了一种精确的力/扭矩传感器校准方法,可以使用深学习算法在单一步骤中校准传感器,并介绍该校准过程中使用的DNN(深神经网络)的建模方法。此外,我们通过多个实验验证校准结果。

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