Cui Jianwei, Huang Zizheng, Li Xiang, Cui Linwei, Shang Yucheng, Tong Liyan
Institute of Instrument Science and Engineering, Southeast University, Nanjing 210096, China.
Micromachines (Basel). 2023 Jun 17;14(6):1265. doi: 10.3390/mi14061265.
At present, research on intelligent wheelchairs mostly focuses on motion control, while research on attitude-based adjustment is relatively insufficient. The existing methods for adjusting wheelchair posture generally lack collaborative control and good human-machine collaboration. This article proposes an intelligent wheelchair posture-adjustment method based on action intention recognition by studying the relationship between the force changes on the contact surface between the human body and the wheelchair and the action intention. This method is applied to a multi-part adjustable electric wheelchair, which is equipped with multiple force sensors to collect pressure information from various parts of the passenger's body. The upper level of the system converts the pressure data into the form of a pressure distribution map, extracts the shape features using the VIT deep learning model, identifies and classifies them, and ultimately identifies the action intentions of the passengers. Based on different action intentions, the electric actuator is controlled to adjust the wheelchair posture. After testing, this method can effectively collect the body pressure data of passengers, with an accuracy of over 95% for the three common intentions of lying down, sitting up, and standing up. The wheelchair can adjust its posture based on the recognition results. By adjusting the wheelchair posture through this method, users do not need to wear additional equipment and are less affected by the external environment. The target function can be achieved with simple learning, which has good human-machine collaboration and can solve the problem of some people having difficulty adjusting the wheelchair posture independently during wheelchair use.
目前,智能轮椅的研究大多集中在运动控制方面,而基于姿态的调整研究相对不足。现有的轮椅姿态调整方法普遍缺乏协同控制和良好的人机协作。本文通过研究人体与轮椅接触面的力变化与动作意图之间的关系,提出了一种基于动作意图识别的智能轮椅姿态调整方法。该方法应用于多部件可调节电动轮椅,该轮椅配备多个力传感器,以收集乘客身体各部位的压力信息。系统上层将压力数据转换为压力分布图的形式,使用VIT深度学习模型提取形状特征,进行识别和分类,最终识别出乘客的动作意图。基于不同的动作意图,控制电动执行器调整轮椅姿态。经测试,该方法能够有效采集乘客的身体压力数据,对于躺下、坐起、站起这三种常见意图的识别准确率超过95%。轮椅能够根据识别结果调整姿态。通过该方法调整轮椅姿态,用户无需穿戴额外设备,受外界环境影响较小。通过简单学习即可实现目标功能,具有良好的人机协作性,能够解决部分人在使用轮椅时独立调整姿态困难的问题。