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Compensation for tactile hysteresis using Gaussian process with sensory Markov property

机译:使用具有感觉马尔可夫特性的高斯过程补偿触觉滞后

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Flexible tactile sensors have been studied to enable robots to interact with objects in unstructured environments. However, due to nonlinearity caused by the hysteresis of tactile materials, it is difficult to accurately convert sensor signals into task-relevant information such as force and slip. To compensate for the hysteresis of flexible tactile sensors, we propose a model based on a Gaussian process. The key idea of our model is to include the Markov property of sensory input. The proposed model not only uses the current tactile signal, but also its time-series signals, to extract the influence of the past states on the current state. We evaluate the accuracy of force estimation using the proposed model in comparison to the normal Gaussian process model, which does not take the Markov property into account. The experimental results demonstrate that the performance of our model improves on the normal Gaussian process in terms of root mean squared error, correlation coefficient, and absolute maximum error between the actual and the estimated force. We discuss the advantages of accounting for the sensory Markov property and the potential ability of the Gaussian process to internally acquire the representation of the deviation of sensory signals.
机译:已经研究了灵活的触觉传感器,以使机器人能够与非结构化环境中的对象进行交互。但是,由于触觉材料的磁滞引起的非线性,很难将传感器信号准确地转换为与任务相关的信息,例如力和滑移。为了补偿柔性触觉传感器的滞后,我们提出了基于高斯过程的模型。我们模型的关键思想是包括感觉输入的马尔可夫特性。所提出的模型不仅使用当前的触觉信号,还使用其时间序列信号,以提取过去状态对当前状态的影响。与正常的高斯过程模型相比,我们使用建议的模型评估力估计的准确性,该模型未考虑马尔可夫性质。实验结果表明,在均方根误差,相关系数以及实际力和估计力之间的绝对最大误差方面,我们的模型的性能在正常的高斯过程中得到了改善。我们讨论了考虑感官马尔可夫性质的优势以及高斯过程在内部获取感官信号偏差表示的潜在能力。

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