基于病理步态评估系统的用户自适应环境感知机器人:首次实验研究

G. Chalvatzaki, X. Papageorgiou, C. Tzafestas
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引用次数: 12

摘要

在为行动不便人士设计方便使用的助行器时,必须考虑到不同程度的残疾,这导致助行器对每个特定用户的需求完全不同。一种智能的适应行为是必要的。在这项工作中,我们展示了实验结果,使用内部开发的方法来评估与机器人MAD交互时具有不同移动状态的用户的步态。我们使用安装在MAD上的激光扫描仪的数据,使用粒子滤波器和概率数据关联(PDA-PF)来跟踪腿。腿的状态被输入到基于hmm的病理步态周期识别系统中,以实时计算对用户移动状态表征至关重要的步态参数。我们的目标是证明步态评估系统将是智能MAD的重要反馈。因此,我们使用该系统来比较使用MAD的两种不同控制设置的受试者的步态,并通过实验验证我们的系统识别控制设计对用户行走性能的影响的能力。结果表明,通用的控制方案并不能满足每个患者的需求,因此,能够理解用户特定需求的自适应上下文感知MAD (ACA MAD)对于增强人机物理交互非常重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a user-adaptive context-aware robotic walker with a pathological gait assessment system: First experimental study
When designing a user-friendly Mobility Assistive Device (MAD) for mobility constrained people, it is important to take into account the diverse spectrum of disabilities, which results to completely different needs to be covered by the MAD for each specific user. An intelligent adaptive behavior is necessary. In this work we present experimental results, using an in house developed methodology for assessing the gait of users with different mobility status while interacting with a robotic MAD. We use data from a laser scanner, mounted on the MAD to track the legs using Particle Filters and Probabilistic Data Association (PDA-PF). The legs' states are fed to an HMM-based pathological gait cycle recognition system to compute in real-time the gait parameters that are crucial for the mobility status characterization of the user. We aim to show that a gait assessment system would be an important feedback for an intelligent MAD. Thus, we use this system to compare the gaits of the subjects using two different control settings of the MAD and we experimentally validate the ability of our system to recognize the impact of the control designs on the users' walking performance. The results demonstrate that a generic control scheme does not meet every patient's needs, and therefore, an Adaptive Context-Aware MAD (ACA MAD), that can understand the specific needs of the user, is important for enhancing the human-robot physical interaction.
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