Real-time processing of force sensor signals based on LSTM-RNN

Qiao Liu, Yu Dai, Mengwen Li, Bin Yao, Yunwei Xin, Jianxun Zhang
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引用次数: 1

Abstract

Multi-dimensional force sensors are of great significance to improve the perception of robots. It's very important to remove the drift and noise of the multi-dimensional force sensor signal caused by environmental changes. Recurrent Neural Network based on Long-Short Term Memory (LSTM-RNN) is proposed for real-time signal processing of multi-dimensional force sensors. Firstly, Adaptive Empirical Mode Decomposition (AEMD) is verified to be effective in removing drift and noise from multi-dimensional force sensor signals. Then, AEMD is utilized to process the force sensor signal and LSTM-RNN is trained by the processed signal. In the force test experiment, the errors of different signals processed by LSTM-RNN are very small and smaller than those of RNN signal processing, which proves that the trained LSTM-RNN can effectively process multi-dimensional force sensor signals in real time.
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基于LSTM-RNN的力传感器信号实时处理
多维力传感器对于提高机器人的感知能力具有重要意义。消除环境变化对多维力传感器信号产生的漂移和噪声是非常重要的。提出了基于长短期记忆的递归神经网络(LSTM-RNN)用于多维力传感器的实时信号处理。首先,验证了自适应经验模态分解(AEMD)对去除多维力传感器信号中的漂移和噪声的有效性。然后利用AEMD对力传感器信号进行处理,利用处理后的信号训练LSTM-RNN。在力测试实验中,LSTM-RNN处理不同信号的误差非常小,且小于RNN信号处理的误差,证明训练后的LSTM-RNN可以有效地实时处理多维力传感器信号。
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