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CONVOLUTIONAL NEURAL NETWORKS FOR ENVIRONMENTALLY AWARE LOCOMOTION MODE RECOGNITION OF LOWER-LIMB AMPUTEES

机译:下肢截肢者环境感知运动模式识别的卷积神经网络

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Powered lower-limb prostheses feature a high-level intelligent control system, referred to as locomotion mode recognition (LMR), which enables seamless amputee-prosthesis interactions through activation of appropriate low-level controllers depending on the user's gait intent and environment. Environmental and terrain conditions provide valuable subject-independent prior information about the upcoming locomotion modes, which enable the design of seamless and non-delayed LMR systems. The objective of this paper is to validate the feasibility of deep convo-lutional neural networks (CNNs) for distinguishing three environmental conditions: level walking, stair ascent, and stair descent. The CNN automates feature learning and extraction that in traditional models were hand-engineered. We construct an efficient CNN through transfer learning from a pre-trained model where input images are captured from seven able-bodied subjects during various indoor and outdoor daily-life walking tasks. A stand still detection algorithm is developed by means of an iner-tial measurement unit sensor to automate the task of image capture. To further enhance prediction performance, we incorporate the history of previously predicted environmental conditions and the categorical information about the environment property (e.g., number of steps in a staircase). The proposed environment recognition system achieves an overall accuracy of about 99% on the test data. Results verify the potential of CNN to accurately predict the environmental conditions that can be used individually or in combination with other sensors to design an accurate and robust LMR system for lower-limb amputees with powered pros-theses.
机译:动力强劲的下肢假肢具有高级智能控制系统,称为运动模式识别(LMR),该系统可以根据用户的步态和环境,通过激活适当的低层控制器来实现截肢者与假肢之间的无缝交互。环境和地形条件提供了有关即将到来的运动模式的与受试者无关的有价值的先验信息,这使设计无缝和无延迟的LMR系统成为可能。本文的目的是验证深度卷积神经网络(CNN)区分三种环境条件的可行性:水平行走,楼梯上升和楼梯下降。 CNN可以自动完成传统模型中手工设计的特征学习和提取功能。我们通过从预先训练的模型中进行转移学习来构造有效的CNN,该模型在各种室内和室外日常生活中的步行任务中从七个身体健全的对象捕获输入图像。静止检测算法是通过惯性测量单元传感器开发的,可自动执行图像捕获任务。为了进一步提高预测性能,我们结合了先前预测的环境条件的历史记录以及有关环境属性的分类信息(例如,楼梯中的台阶数)。所提出的环境识别系统在测试数据上实现了约99%的整体精度。结果验证了CNN准确预测环境条件的潜力,可以单独使用或与其他传感器结合使用,从而为带有假肢的下肢截肢者设计准确而强大的LMR系统。

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