IEEE Trans Neural Syst Rehabil Eng. 2019 Mar;27(3):465-476. doi: 10.1109/TNSRE.2019.2895221. Epub 2019 Jan 25.
This paper aims to present a robust environmental features recognition system (EFRS) for lower limb prosthesis, which can assist the control of prosthesis by predicting the locomotion modes of amputees and estimating environmental features in the following steps. A depth sensor and an inertial measurement unit are combined to stabilize the point cloud of environments. Subsequently, the 2D point cloud is extracted from origin 3D point cloud and is classified through a neural network. Environmental features, including slope of road, width, and height of stair, were also estimated via the 2D point cloud. Finally, the EFRS is evaluated through classifying and recognizing five kinds of common environments in simulation, indoor experiments, and outdoor experiments by six healthy subjects and three transfemoral amputees, and databases of five healthy subjects and three amputees are used to validate without training. The classification accuracy of five kinds of common environments reach up to 99.3% and 98.5% for the amputees in the indoor and outdoor experiments, respectively. The locomotion modes are predicted at least 0.6 s before the switch of actual locomotion modes. Most estimation errors of indoor and outdoor environments features are lower than 5% and 10%, respectively. The overall process of EFRS takes less than 0.023 s. The promising results demonstrate the robustness and the potential application of the presented EFRS to help the control of lower limb prostheses.
本文旨在提出一种稳健的下肢假肢环境特征识别系统(EFRS),通过预测截肢者的运动模式和估计环境特征,辅助假肢控制。该系统采用深度传感器和惯性测量单元相结合的方式来稳定环境点云,然后从原始 3D 点云中提取 2D 点云,并通过神经网络对其进行分类。通过 2D 点云,还可以估计环境特征,包括道路坡度、楼梯宽度和高度。最后,通过对模拟、室内实验和室外实验中 6 名健康受试者和 3 名股骨截肢者进行的 5 种常见环境的分类和识别,对 EFRS 进行了评估,同时还使用了 5 名健康受试者和 3 名截肢者的数据库进行了无需训练的验证。在室内和室外实验中,假肢受试者的 5 种常见环境分类准确率分别达到了 99.3%和 98.5%。运动模式的预测至少可以提前实际运动模式切换 0.6 s。室内和室外环境特征的大多数估计误差都低于 5%和 10%。EFRS 的整体处理时间不到 0.023 s。有前景的结果表明,所提出的 EFRS 具有鲁棒性和潜在的应用价值,可以帮助控制下肢假肢。