基于多传感器信息融合的外骨骼运动意图辨识

Exoskeleton Motion Intention Recognition Based on Multi-sensor Information Fusion

  • 摘要: 为了实现外骨骼机器人的柔顺运动控制,需要对穿戴者的运动意图进行实时准确地辨识与预测。本研究利用多传感器信息融合的方法完成对穿戴者运动意图的识别。通过对多种机器学习算法在识别准确性、资源消耗和处理实时性进行比较、最终确定利用支持向量机(SVM)实现对日常8个运动模式(静坐、双腿站立、步行、跑步、上下斜坡和上下楼梯)完成动作模式的识别,识别平均准确率达到95%。对于运动相位和运动切换事件的预测,利用神经-模糊推理理论完成运动相位识别与状态切换事件的预测。在给定的测试集上相位识别准确率为99%,且预测的状态切换时刻与真实时间的偏移绝对值的均值为61.6 ms,满足外骨骼柔顺控制对预测时间的要求。

     

    Abstract: Accurate identification and prediction of a wearer's motion intention in real time are necessary to realize the compliant motion control of exoskeleton robots. Thus, we use the multi-sensor information fusion method to recognize the wearer's motion intention. The comparison of various machine learning algorithms with respect to recognition accuracy, resource consumption, and real-time processing revealed that support vector machine can recognize eight daily motion patterns (sitting, standing, walking, running, ramp ascent, ramp descent, stairs ascent and stairs descent), at an average recognition accuracy rate of 95%. The neuro-fuzzy inference theory is adopted to predict motion phase and motion switching events. On the given test set, the phase recognition accuracy rate is 99%, and the average absolute value of the deviation between the predicted and real-time state switching moments is 61.5 ms. This observation meets the requirements of exoskeleton compliance control for predicting time.

     

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