基于人体关节模型的顺应康复外骨骼设计和控制

项目来源

国家自然科学基金(NSFC)

项目主持人

李国民

项目受资助机构

华中科技大学

立项年度

2017

立项时间

未公开

项目编号

U1713204

研究期限

未知 / 未知

项目级别

国家级

受资助金额

300.00万元

学科

工程与材料科学-机械设计与制造-机械仿生学与生物制造

学科代码

E-E05-E0507

基金类别

联合基金项目-重点支持项目-NSFC-深圳机器人基础研究中心项目

关键词

人体状态监测 ; 人体关节模型 ; 康复机器人 ; 顺应驱动 ; 外骨骼 ; Exoskeletons ; Rehabilitation robots ; Human body state monitoring ; Compliant actuators ; Human-joint models

参与者

胡波;彭小波;白坤;高杰;冀晶晶;王东海;张晓燕;丁秋萍;郝兵杰

参与机构

深圳市职业病防治院;深圳大学

项目标书摘要:物理康复训练可以帮助运动功能损伤患者进行神经再生或重建,对于患者运动功能的恢复有着非常重要的作用。为实现科学高效的机器辅助训练并减少康复过程中的医疗人员和资源,本课题将围绕人机顺应开展康复外骨骼机器人研究。.关节是人体运动的基础,对其结构和运动特征的深入认知是实现康复外骨骼对人体运动高度顺应以及人机融合的前提。因此,本课题将通过对人体主要关节的结构和运动特性分析以及对不同关节的共性总结,提出高度顺应人体关节运动的外骨骼设计和控制方法,并以此为基础,通过研究人体运动多肢体协同和负载分配规律,实现以全身型康复外骨骼为中心的系统康复训练,并更好解决训练过程中外骨骼驱动顺应控制和人体参数在线测量等核心问题。本课题的研究将为实现人体结构和运动精确的数学表达,发展基于智能体模的人性化机械—传感—驱动一体化设计和顺应控制方法,并形成具有更好人机相容性的外骨骼康复装备做出贡献。

Application Abstract: Physical therapy which facilitates to rebuild/reconnect human neuromuscular systems plays a crucial part in the rehabilitation process for people with motor function injuries.Robot-/machine-aided therapy which allows for effective and efficient training can greatly alleviate the workload and intensity of therapists and reduce the medical costs involved in rehabilitation.Targeted for improving the human-machine compliance and cooperation in robot-aided therapy,the proposed research focuses on the key studies for developing rehabilitative exoskeleton systems...Human joints are the essential components forming human motions.Therefore,the understanding on both the structures and motion patterns of the joints is the key for developing exoskeletons that adapt to and cooperate closely with human wearers.This proposal aims at developing new design criteria and control methods for rehabilitative exoskeletons to achieve better human-machine compliance by constructing models that precisely characterize and render the motion patterns of different human joints.By studying the coordination and load distributions among the limbs of a human body,the design methods for developing a full-body exoskeleton facilitating systematic and comprehensive rehabilitations will be established;and techniques for building sensing and actuator systems which allows for real-time parameter monitoring and compliance control will be developed.The proposed studies are expected to contribute on systematically formulating human motions and developing design and control methods for adaptable exoskeletons for rehabilitation.

项目受资助省

湖北省

项目结题报告(全文)

物理康复训练能帮助运动功能损伤患者进行神经再生或重建,有助于患者运动功能的恢复。为实现科学高效的机器辅助训练并减少康复过程中的医疗人员和资源,本项目围绕人机顺应开展康复外骨骼机器人研究,旨在通过对人体主要关节的结构和运动特性分析及对不同关节的共性总结,实现人体结构和运动精确的数学表达,发展人性化机械—传感—驱动一体化设计和顺应控制方法,并形成具有更好人机相容性的外骨骼康复装备。该项目在人体关节建模、感知与重构,非对称外骨骼设计、驱动控制及智能化康复策略等关键问题上取得了突破。提出了基于外部有限测量观测人体内部力位信息的方法,建立了关节特征通用化、参数化表达理论。基于关节模型提出了仿生顺应式外骨骼关节设计。提出基于人机闭合运动链的人体关节运动观测方法,开发融合磁场的嵌入式运动测量系统,实现了人体运动/力状态和运动意图的实时感知。设计了面向中风康复的非对称外骨骼(躯干及下肢),提出了基于机器学习的步态康复智能进化策略,通过测量健肢运动,指导患侧外骨骼在不同步态相位分别实现支撑和顺应,以促进递进式步态康复。为实现患侧肢体受电刺激自主运动,辅助外骨骼驱动,发展了电流干涉扫描方法,实现非侵入靶向电刺激。研制了坐到站运动辅助装置和康复外骨骼系统;搭建了基于磁场传感的分布式位移、力、阻抗测量重构平台和虚拟现实训练场景;研究了基于机器视觉的步态识别与评价方法,建立了可用于下肢康复外骨骼康复效果评价的步态识别体系。该系统有效克服了过度简化的关节设计在人机关节错位时造成人体不适和伤害的局限,可支撑44%的体重并减少人体髋、膝、踝25%以上的关节内力、力矩峰值,并用于中风康复的临床实验。

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  • 1.Effects of Differential Magnetic Field/Tensor and Redundant Measurements on Multi-DOF Motion Estimation of a Magnetic Sensing System

    • 关键词:
    • Dipole; gradient tensor; localization; magnetic sensor; motion sensing;redundant measurements;DIPOLE LOCALIZATION; SENSORS; DESIGN; FIELD
    • Jiang, Jiaoying;Que, Zixin;Lee, Kok-Meng;Ji, Jingjing
    • 《IEEE SENSORS JOURNAL》
    • 2023年
    • 23卷
    • 15期
    • 期刊

    This article presents a multi-DOF motion sensing system consisting of a permanent magnet (PM) and a magnetic tensor sensor (MTS) comprising a 3 x 3 array of three-axis digital magnetic flux density (MFD) sensors, and the methods to measure their relative MTS-PM position/orientation in a 3-D space. The design enables redundant differential measurements of MFD vectors and gradient tensor components to account for the singularities due to matrix inversion, providing a basis to explore different methods for multi-DOF estimation of the PM position/pose. Formulated as a two-stage linear least-square (LS) problem to take advantage of the dipole simplicity and exploit its physics revealed by its inverse model to guide the design of a fully connected artificial neural network (ANN) to account for the MTS measurement noise and un-modeled factors, a prototype multi-MTS system capable of 5-DOF motion measurements is developed and evaluated experimentally along with a study analyzing the parametric effects on the estimation accuracy; both stationary and moving sensor scenarios are considered. Enhanced with a fully connected ANN, an accuracy within a root-mean-square error (RMSE) of 40 mu m spatial position and 0.1 degrees pose can be uniquely obtained without subtracting a predetermined geomagnetic field in both fixed and moving multi-MTS scenarios, representing a significant improvement over the (0.5 mm, 1 degrees) RMSE of the single-MTS.

    ...
  • 2.Muscle-Driven Joint-Torque Estimation Based on Voltage-Torque Mapping of Electrical Impedance Sensing

    • 关键词:
    • Muscles; Torque; Sensors; Voltage measurement; Impedance; Torquemeasurement; Conductivity; Electrical impedance; human joint torque;machine learning; muscle force;MODEL
    • Li, Junwei;Lee, Kok-Meng
    • 《IEEE SENSORS JOURNAL》
    • 2023年
    • 23卷
    • 13期
    • 期刊

    This article offers an impedance sensing method taking advantage of the conductivity changes due to muscle contraction to estimate muscle-driven joint torques through a convolutional neural network (CNN), where the input images are derived from a finite set of boundary voltage measurements. Guided by a physical model combining the forearm biomechanics and the muscle electric field along with the CNN criteria considering the receptive fields (RFs), the effects of two image formats [for quasi-static (QS) and dynamic (DYN) states] on the CNN performance are experimentally studied on eight human subjects' forearms using a prototype impedance sensing system. By comparing the CNN-estimated torques with that measured on a haptic device, the findings verify that the impedance-based method can estimate the joint torques driven by both the deep and superficial muscles within 9% errors of the three degrees-of-freedom wrist torque and 10% error of the gripping torque and that it is feasible to share data among a similar group to reduce data collection and time when training a CNN for uses on a new subject.

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  • 3.Parametric and Noise Effects on Magnetic Sensing System for Monitoring Human-Joint Motion of Lower Extremity in Sagittal Plane

    • 关键词:
    • Sensors; Magnetic sensors; Motion measurement; Legged locomotion; Noisemeasurement; Robot sensing systems; Magnetic field measurement; Jointkinematics; joint motion tracking; magnetic sensing; wearable sensor;KNEE; DESIGN
    • Hu, Guangzhou;Jiang, Jiaoying;Lee, Kok-Meng
    • 《IEEE SENSORS JOURNAL》
    • 2023年
    • 23卷
    • 5期
    • 期刊

    This article presents a three-degree-of-freedom (3-DOF) magnetic sensor, referred to here as a pantographic exoskeleton (PGE) sensor, for monitoring in real time the internal human-joint motion in the sagittal plane. With two sets of embedded magnetic sensors and a permanent magnet, the PGE wearable on a healthy leg or lower extremity exoskeleton (LEE) independently measures the 2-DOF translations and the joint angle. Two sensor estimation methods, which are the model-based and the artificial neural network (ANN), are experimentally analyzed in the presence of measurement noise. As an illustration, the PGE sensors are evaluated for sit-to-stand (STS) exercises, where the real-time measurements are verified by comparing with the joint angles determined by a commercial VICON motion capture system, and the translational deviations measured on a 4-DOF platform manipulated to follow a specified internal motion trajectory of an ankle joint during STS. With the ANNs appropriately trained to account for measurement noise, the PGE sensors can track the joint angles while measuring the internal motions of both legs with or without the LEE demonstrating that the PGE sensor has the potential to serve as an indicator of stroke rehabilitation where patients lack force perception and suffer an increased risk of falls due to the weak affected leg.

    ...
  • 4.Color Machine Vision Design Methodology of a Part-Presentation Algorithm for Automated Poultry Handling

    • 关键词:
    • Color; feature; image; machine vision; template
    • Lu, Jin;Lee, Kok-Meng;Ji, Jingjing
    • 《IEEE-ASME TRANSACTIONS ON MECHATRONICS》
    • 2022年
    • 期刊

    This article offers an image processing method to optimize the design of a three-level color machine vision algorithm illustrated in the context of presenting a whole chicken carcass for subsequent handling, which overcomes some common problems in image segmentation, feature identification, and pose estimation for classifying, identifying, and locating poultry meat products. First, artificial color contrast and principal component analysis are optimized to enhance the contrast between similar colors to extract targeted regions more effectively. Second, the boundaries of poultry products are mostly smooth curves that are proposed as features for object recognition. Third, image feature points are found using template matching, from which the object (size, location, and pose) can be accurately determined. The algorithm simplifies the complex edges of a poultry product into a finite number of arc-centers, which greatly improves the efficiency/accuracy of the matching for part-presentation. Evaluated with 100 randomly posed samples, the algorithm has a success rate of 93%. The 7% failures were primarily due to missing points, which can be eliminated by incorporating more template points.

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  • 5.Wearable Magnetic Flexonic Sensor Nodes for Simultaneous Normal Force and Displacement Measurements

    • 关键词:
    • Arches;Costs;Displacement measurement;Magnetic sensors;Magnetism;Sensor nodes;Tactile sensors;Compliant sensor;Displacements measurements;Early stroke rehabilitation;Foot;Foot arches;Force;Force sensor;Forces measurements;Magnetic sensing;Plantar force ;Robot sensing system;Stroke rehabilitation
    • Ji, Jingjing;Qiu, Chengwei;Lee, Kok-Meng
    • 《IEEE Robotics and Automation Letters》
    • 2022年
    • 7卷
    • 4期
    • 期刊

    Illustrated in the context of home-based stroke rehabilitation, this paper presents the design and development of magnetic flexonic sensor nodes (FSNs) with configurable parameters for simultaneous sensing of normal forces and displacement. The FSN is composed of a magnetic sensor in flexible elements that can be embedded in wearable devices and rapid-prototyped at a low cost to facilitate distributed force sensing applications. As an illustration, a shoe insole with 19 embedded FSN for monitoring the plantar force distribution and arch height has been designed, prototyped, and experimentally evaluated by comparing it with a commercial dynamometric platform. The FSN-embedded insole directly measures the arch height and captures the transients of the plantar forces in five different zones in real-time. Because of the simplicity and low cost, FSNs have the potential to facilitate fabricating low-cost sensing systems, for example, for home-based stroke rehabilitation where the insole stiffness and arch height of the embeddable electronic sensors can be configured according to the patient's specific abnormal plantar distribution to adapt to different range and distribution and wearable configuration during different rehabilitation state. © 2016 IEEE.

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  • 6.Effects of Refraction Model on Binocular Visuotactile Sensing of 3-D Deformation

    • 关键词:
    • 3-D deformation sensing; binocular vision; refraction model; tactilesensor; tracking;SURFACE; SENSORS; VISION
    • Ma, Huan;Ji, Jingjing;Lee, Kok-Meng
    • 《IEEE SENSORS JOURNAL》
    • 2022年
    • 22卷
    • 18期
    • 期刊

    This article presents a binocular visuotactile sensor (BVTS) and its model for reconstructing the 3-D deformation due to mechanical contact on its elastomer surface. The model explicitly accounts for the refraction effects of the elastomer on the depth map reconstructed from the imaged markers. To help gain physical insights into the refraction effects on the depth map reconstruction and experimentally analyze the effectiveness of the model-based BVTS, a prototype BVTS has been developed for experimental investigation. The refractive indexes of the elastomer, the acrylics, and their combination are experimentally determined from the model-based reconstruction and verified with that measured by a spectroscopic ellipsometer; the differences are within 3%. As a basis for evaluation, the reconstructed depth maps are compared with that of the two other commonly used practices, stereovision (SV) calibration without considering refraction and integration camera model that lumps the refraction effects with the SV parameters during calibration. By explicitly modeling the refraction physics using ray tracing, the model-based BVTS faithfully reconstructs the points on the actual height and is capable of dynamically tracking small torsional displacements with balls of different radii (3-15 mm) with a depth error below 4%.

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  • 7.A Novel Method for Soft Contact Sensing Based on Electrical Impedance Sensitivity Images

    • 关键词:
    • Sensors; Sensitivity; Force; Voltage measurement; Force measurement;Conductivity; Robot sensing systems; Contact force; electricalconductivity; field reconstruction; impedance; learning; sensitivity;tactile;TACTILE SENSORS; SKIN; FORCE
    • Li, Junwei;Lee, Kok-Meng
    • 《IEEE SENSORS JOURNAL》
    • 2022年
    • 22卷
    • 10期
    • 期刊

    This paper presents a distributed soft contact sensing method based on a sensitivity mapping function, which relates the change in measured voltages to that in the elastomer conductivity due to contact force acting on its surface. The sensitivity-image-based sensing system uses a small number of boundary electrodes with a multiplexer to create different electric-field patterns to generate a series of sensitivity images for machine learning, significantly reducing the number of training data typically obtained with single-point indentation measurements. The mapping function, which does not rely on the knowledge of the electric and conductivity fields during online sensing, can be trained with only a small amount of measured data in the order of the square of electrode number. The proposed method has been experimentally evaluated on two 16-electrode prototypes trained with 129 and 80 data for two typical applications, which are tactile perception on a flat surface and contact force measurement in a model knee joint, respectively. The former verifies the measurement accuracy of the contact position and force magnitude while the latter demonstrates the application of this method for measuring the internal joint forces between two curved surfaces.

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  • 8.Digital Magnetic Tensor Sensor With ANN Measurement Model for Human Joint Motion Sensing in Sagittal Plane

    • 关键词:
    • Exoskeletons; Sensors; Tensors; Motion measurement; Magnetic resonanceimaging; Robot sensing systems; Analytical models; Artificial neuralnetwork (ANN); dipole; inverse solutions; joint motion; magnetic tensor;sensors;STROKE; DESIGN
    • Jiang, Jiaoying;Lee, Kok-Meng
    • 《IEEE-ASME TRANSACTIONS ON MECHATRONICS》
    • 2022年
    • 27卷
    • 4期
    • 期刊

    Motivated by the increased needs of home-based rehabilitation for stroke patients, more and more interest has been drawn towards developing body-fixed sensors for monitoring affected joint motions. Although relatively accurate bone geometries can be obtained by scanning technologies, most human joints are approximated by simple circles and spheres to reduce the highly nonlinear kinematics to a tractable form for motion studies; many human joint-motion sensing challenges remain open. This article presents a novel magnetic tensor sensor (MTS) for noncontact tracing a human joint trajectory and a physics-based measurement model implemented on an artificial neural network (ANN) to account for un-modeled factors. The effects of input configurations and datatypes on measurement accuracy of an MTS/ANN have been numerically investigated with published data and experimentally evaluated on a prototype pantographic exoskeleton worn on a human shank/foot. As demonstrated experimentally, the MTS/ANN system calibrates the sensor intrinsic parameters, accounts for the environmental magnetic effects on the measurements, and can be trained with both offline and user-specific data.

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  • 9.Classification of lower limb motor imagery based on iterative EEG source localization and feature fusion

    • 关键词:
    • Brain computer interface;Classification (of information);Data handling;Electroencephalography;Extraction;Feature extraction;Image classification;Iterative methods;Particle swarm optimization (PSO);Brain–computer interface;Channel sets;Features fusions;Iterative electroencephalogram source localization;Low limb motor imagery;Lower limb;Motor imagery;PSO-support vector machine;Source localization;Support vectors machine
    • Peng, Xiaobo;Liu, Junhong;Huang, Ying;Mao, Yanhao;Li, Dong
    • 《Neural Computing and Applications》
    • 2023年
    • 35卷
    • 19期
    • 期刊

    Motor imagery (MI) brain–computer interface (BCI) systems have broad application prospects in rehabilitation and other fields. However, to achieve accurate and practical MI-BCI applications, there are still several critical issues, such as channel selection, electroencephalogram (EEG) feature extraction and EEG classification, needed to be better resolved. In this paper, these issues are studied for lower limb MI which is more difficult and less studied than upper limb MI. First, a novel iterative EEG source localization method is proposed for channel selection. Channels FC1, FC2, C1, C2 and Cz, instead of the commonly used traditional channel set (TCS) C3, C4 and Cz, are selected as the optimal channel set (OCS). Then, a multi-domain feature (MDF) extraction algorithm is presented to fuse single-domain features into multi-domain features. Finally, a particle swarm optimization based support vector machine (SVM) method is utilized to classify the EEG data collected by the lower limb MI experiment designed by us. The results show that the classification accuracy is 88.43%, 3.35–5.41% higher than those of using traditional SVM to classify single-domain features on the TCS, which proves that the combination of OCS and MDF can not only reduce the amount of data processing, but also retain more feature information to improve the accuracy of EEG classification. © 2021, The Author(s).

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