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A Novel Method for Bilateral Gait Segmentation Using a Single Thigh-Mounted Depth Sensor and IMU

机译:一种使用单个大腿安装深度传感器和IMU的双侧步态分段的新方法

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Lower limb assistive devices have shown potential to restore mobility to millions of individuals with walking impairments; however, their success depends on whether they can be controlled safely, reliably, and intuitively with user-friendly sensors. To assist the user's walking patterns, many devices implement finite-state controllers which rely on accurate estimation of the current gait phase (e.g. stance, swing) of one or both legs. Bilateral gait segmentation is especially important for restoring natural interlimb coordination, which contributes to device safety and efficiency. Most existing techniques for gait segmentation use ground contact, device-embedded, or body-worn sensors with threshold or machine learning-based algorithms. They have been effective at identifying the state of the ipsilateral (i.e. sensor-side) leg but can become inconvenient for bilateral gait segmentation because they often require many sensors and are more sensitive to sensor placement. Therefore, we present a proof of concept for a novel approach to bilateral gait segmentation using a thigh-mounted inertial measurement unit (IMU) and depth sensor with the contralateral leg in its field of view. We extracted two features, ground and shank angle, from the depth data and developed a sensor fusion strategy to predict contralateral heel contact and ipsilateral toe off with accuracy approaching that of a setup with bilateral thigh and shank IMUs. By using computer vision to estimate the state of both legs, we introduce a new technique for bilateral gait segmentation which could make assistive devices more user-friendly, safe, and functional.
机译:下肢辅助装置表明潜力恢复多重障碍的多重人员;但是,他们的成功取决于它们是否可以使用用户友好的传感器安全地,可靠地,直观地控制。为了帮助用户的行走模式,许多设备实现有限状态控制器,该控制器依赖于一个或两个腿的电流步态相位(例如姿势,摆动)的精确估计。双边步态细分对于恢复自然的中间间协调尤为重要,这有助于设备安全和效率。大多数现有的步态分割技术使用具有基于阈值或机器学习的算法的接地触点,装置嵌入或身体磨损的传感器。它们有效地识别IPsilAteLal(即传感器侧)腿的状态,但可能对双边步态分割变得不方便,因为它们通常需要许多传感器并且对传感器放置更敏感。因此,我们展示了一种使用大腿安装的惯性测量单元(IMU)和深度传感器在其视野中使用大腿安装的惯性测量单元(IMU)和深度传感器来提出一种新的双边步态分割方法的概念证明。我们从深度数据提取了两个特征,地面和柄角,并开发了一种传感器融合策略,以预测对侧跟骨接触和同侧脚趾关闭,精度接近与双边大腿和柄部米的设置。通过使用计算机愿景来估计两条腿的状态,我们向双边步态分割引入了一种新技术,可以使辅助设备更加用户友好,安全和功能。

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