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Understanding LSTM Network Behaviour of IMU-Based Locomotion Mode Recognition for Applications in Prostheses and Wearables

机译:了解基于IMU的Locomotion模式识别的LSTM网络行为以便在假体和可穿戴物中的应用程序

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摘要

Human Locomotion Mode Recognition (LMR) has the potential to be used as a control mechanism for lower-limb active prostheses. Active prostheses can assist and restore a more natural gait for amputees, but as a medical device it must minimize user risks, such as falls and trips. As such, any control system must have high accuracy and robustness, with a detailed understanding of its internal operation. Long Short-Term Memory (LSTM) machine-learning networks can perform LMR with high accuracy levels. However, the internal behavior during classification is unknown, and they struggle to generalize when presented with novel users. The target problem addressed in this paper is understanding the LSTM classification behavior for LMR. A dataset of six locomotive activities (walking, stopped, stairs and ramps) from 22 non-amputee subjects is collected, capturing both steady-state and transitions between activities in natural environments. Non-amputees are used as a substitute for amputees to provide a larger dataset. The dataset is used to analyze the internal behavior of a reduced complexity LSTM network. This analysis identifies that the model primarily classifies activity type based on data around early stance. Evaluation of generalization for unseen subjects reveals low sensitivity to hyper-parameters and over-fitting to individuals’ gait traits. Investigating the differences between individual subjects showed that gait variations between users primarily occur in early stance, potentially explaining the poor generalization. Adjustment of hyper-parameters alone could not solve this, demonstrating the need for individual personalization of models. The main achievements of the paper are (i) the better understanding of LSTM for LMR, (ii) demonstration of its low sensitivity to learning hyper-parameters when evaluating novel user generalization, and (iii) demonstration of the need for personalization of ML models to achieve acceptable accuracy.
机译:人型运动模式识别(LMR)具有用作下肢活性假体的控制机制。活跃的假体可以帮助和恢复更自然的步态,而是作为医疗器械,必须最大限度地减少用户风险,例如瀑布和旅行。因此,任何控制系统都必须具有高精度和稳健性,详细了解其内部操作。长短期内存(LSTM)机器学习网络可以执行高精度水平的LMR。然而,分类期间的内部行为是未知的,并且在用新用户呈现时,他们努力推广。本文解决的目标问题是了解LMR的LSTM分类行为。收集来自22个非截肢主体的六个机车活动(行走,停止,楼梯和斜坡)的数据集,捕获自然环境中活动之间的稳态和过渡。非副本用作提供较大数据集的替代品的替代品。数据集用于分析降低复杂性LSTM网络的内部行为。此分析标识模型主要根据早期姿势周围的数据分类活动类型。看不见受试者的概括的评估揭示了对超参数的敏感性和对个人的步态特征的过度拟合。调查个体主题之间的差异表明,用户之间的步态变化主要发生在早期姿势,可能解释较差的概括。单独调整超级参数无法解决,展示需要个性化模型的个人化。本文的主要成就是(i)对LMR的LSTM更好地了解LMR,(ii)在评估新的用户概括时对学习超参数的低灵敏度的说明,(iii)展示ML模型的个人化的需要实现可接受的准确性。

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