NRI:INT:Collaborative Research:An Open-Source Framework for Continuous Torque Control of Intuitive Robotic Prosthetic Legs

项目来源

美国国家科学基金(NSF)

项目主持人

Eric Rombokas

项目受资助机构

UNIVERSITY OF WASHINGTON

项目编号

2024446

立项年度

2020

立项时间

未公开

研究期限

未知 / 未知

项目级别

国家级

受资助金额

560000.00美元

学科

未公开

学科代码

未公开

基金类别

Standard Grant

关键词

NRI-National Robotics Initiati ; HUMAN-ROBOT INTERACTION ; Natl Robotics Initiative(NRI)

参与者

未公开

参与机构

University of Washington

项目标书摘要:This project will establish an open source set of software control algorithms that will allow an open source robotic prosthetic leg to facilitate rhythmic and non-rhythmic interactions between the human user and the environment.This project builds upon the Open-Source Leg,which is a robust,inexpensive,robotic leg platform that can be easily manufactured,assembled,and programmed.The project's overarching goal is to enable customizable behaviors that are continuously cued by the movement of the user’s body.The project promotes the progress of science by creating open source control hardware and software for compliant actuators that extend the capabilities of the Open-Source Leg.The advantages of compliant torque control,combined with intuitive,expressive control from the user,represents a significant improvement over currently-available prosthetic legs.The project will advance the national health by developing and testing high-level control software that will allow users of the Open Source Leg to seamlessly navigate around obstacles and perform dynamic activities.The improved mobility provided by these technologies will improve the quality of life and functional capabilities of many people living with mobility impairment.Open source hardware and software lower barriers to access for robotic technologies,which makes these robots great candidates not only as assistive co-robots in healthcare and other applications but also as educational tools for undergraduate and graduate students.Emerging powered prostheses such as the NSF-funded Open-Source Leg have motors that can restore normative biomechanics to above-knee amputees,but these devices are limited by their control strategies to a small set of pre-defined,steady-state activities.Each activity is typically divided into a discrete progression of gait periods called phases,resulting in a large set of distinct controllers that struggle to continuously coordinate prosthetic limb motion with the user.Discrete control paradigms have not been able to facilitate transient behaviors like transitions between activities or non-rhythmic motions like stepping backwards or stepping over obstacles.Recently,a new control paradigm has emerged that continuously synchronizes or coordinates prosthetic limb motion to the user based on inertial measurements from the user’s body(e.g.,the residual limb).However,prior implementations have been limited to lab-specific prosthetic leg designs with stiff actuators that rigidly enforce the kinematic mappings from user motion to prosthetic joint position rather than complying to varying environmental interactions.The recently developed Open-Source Leg presents a unique opportunity to integrate this state-of-the-art control paradigm in a universally accessible testbed with series elastic actuators that soften interactions between the user,prosthesis,and environment.The overall goals of this project are to 1)understand how to achieve closed-loop torque and impedance control in the series elastic actuator of the open-source leg despite unmodeled dynamics from its low-cost design,and 2)understand how to integrate high-fidelity joint impedance control with two novel continuous controllers that promise to allow users to flexibly and seamlessly navigate obstacles and perform dynamic activities.This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.

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  • 1.A Non-Laboratory Gait Dataset of Full Body Kinematics and Egocentric Vision.

    • 关键词:
    • ;

    In this manuscript, we describe a unique dataset of human locomotion captured in a variety of out-of-the-laboratory environments captured using Inertial Measurement Unit (IMU) based wearable motion capture. The data contain full-body kinematics for walking, with and without stops, stair ambulation, obstacle course navigation, dynamic movements intended to test agility, and negotiating common obstacles in public spaces such as chairs. The dataset contains 24.2 total hours of movement data from a college student population with an approximately equal split of males to females. In addition, for one of the activities, we captured the egocentric field of view and gaze of the subjects using an eye tracker. Finally, we provide some examples of applications using the dataset and discuss how it might open possibilities for new studies in human gait analysis. © 2023. The Author(s).

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  • 2.Optimizing Representations of Multiple Simultaneous Attributes for Gait Generation Using Deep Learning

    • 关键词:
    • Trajectory; Cost function; Training; Legged locomotion; Costs; Mood;Decoding; Resentation learning; autoencoders; generative models;multi-task learning; style transfer; assistive devices; exoskeletons;personalization
    • Sharma, Abhishek;Rombokas, Eric
    • 《IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING》
    • 2023年
    • 31卷
    • 期刊

    Rich variations in gait are generated according to several attributes of the individual and environment, such as age, athleticism, terrain, speed, personal "style", mood, etc. The effects of these attributes can be hard to quantify explicitly, but relatively straightforward to sample. We seek to generate gait that expresses these attributes, creating synthetic gait samples that exemplify a custom mix of attributes. This is difficult to perform manually, and generally restricted to simple, human-interpretable and handcrafted rules. In this manuscript, we present neural network architectures to learn representations of hard to quantify attributes from data, and generate gait trajectories by composing multiple desirable attributes. We demonstrate this method for the two most commonly desired attribute classes: individual style and walking speed. We show that two methods, cost function design and latent space regularization, can be used individually or combined. We also show two uses of machine learning classifiers that recognize individuals and speeds. Firstly, they can be used as quantitative measures of success; if a synthetic gait fools a classifier, then it is considered to be a good example of that class. Secondly, we show that classifiers can be used in the latent space regularizations and cost functions to improve training beyond a typical squared-error cost.

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  • 3.Deep learning and session-specific rapid recalibration for dynamic hand gesture recognition from EMG

    • 关键词:
    • Computer hardware;Decoding;Deep learning;Gesture recognition;Memory architecture;Palmprint recognition;Signal encoding;Virtual reality;Dimensionality reduction;Electromyography-electomyographic;Encoder-decoder;Encoder-decoder model;Gestures recognition;Hand-tracking;Human-computer interaction;Learn+;Open hardware;Recalibrations
    • Karrenbach, Maxim;Preechayasomboon, Pornthep;Sauer, Peter;Boe, David;Rombokas, Eric
    • 《Frontiers in Bioengineering and Biotechnology》
    • 2022年
    • 10卷
    • 期刊

    We anticipate wide adoption of wrist and forearm electomyographic (EMG) interface devices worn daily by the same user. This presents unique challenges that are not yet well addressed in the EMG literature, such as adapting for session-specific differences while learning a longer-term model of the specific user. In this manuscript we present two contributions toward this goal. First, we present the MiSDIREKt (Multi-Session Dynamic Interaction Recordings of EMG and Kinematics) dataset acquired using a novel hardware design. A single participant performed four kinds of hand interaction tasks in virtual reality for 43 distinct sessions over 12 days, totaling 814 min. Second, we analyze this data using a non-linear encoder-decoder for dimensionality reduction in gesture classification. We find that an architecture which recalibrates with a small amount of single session data performs at an accuracy of 79.5% on that session, as opposed to architectures which learn solely from the single session (49.6%) or learn only from the training data (55.2%). Copyright © 2022 Karrenbach, Preechayasomboon, Sauer, Boe and Rombokas.

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  • 4.Continuous and Unified Modeling of Joint Kinematics for Multiple Activities

    • 关键词:
    • Legged locomotion; Prosthetics; Kinematics; Knee; Trajectory; Stairs;Task analysis; Prosthetic limbs; biomechatronics; rehabilitationrobotics;GAIT KINEMATICS; MALE SERVICEMEMBERS; ANKLE; MOTION; RECOGNITION;RELIABILITY; STRATEGIES; MOBILITY; SYSTEM; TESTS
    • Rai, Vijeth;Sharma, Abhishek;Boe, David;Preechayasomboon, Pornthep;Rombokas, Eric
    • 《IEEE ACCESS》
    • 2022年
    • 10卷
    • 期刊

    Intuitive control of powered prosthetic lower limbs is still an open-ended research goal. Current controllers employ discrete locomotion modes for well-defined and frequently encountered scenarios such as stair ascent, stair descent, or ramps. Non-standard movements such as side-shuffling into cars and avoiding obstacles are challenging to powered limb users. Human locomotion is a continuous motion comprising rhythmic and non-rhythmic movements, fluidly adapting to the environment. It exhibits strong inter-joint coordination and the movement of a single joint can be largely predicted based on the movement of the rest of the body. We explore a continuous and unified kinematics estimation strategy for a wide variety of movements without the need for labeled examples. Our data-driven approach uses natural body motion from the intact limbs and trunk to generate a kinematic reference trajectory for prosthetic joints. Wearable sensors were worn by 63 subjects without disabilities to record full-body kinematics during typical scenarios (flat ground and stairs), and non-rhythmic and atypical movements (side shuffles, weaving through cones, backward walking). A Recurrent Neural Network (RNN) was trained to predict right ankle and knee kinematics from the kinematics of other joints as inputs. Results were assessed on 3 different test subjects previously unseen by the network. All predictions had a RMSE of less than 7.5 degrees and a high correlation across activities. These offline predictions were robust to subject-specific variations such as walking speed and step length. Additionally, to test the feasibility of using a data-driven reference towards prosthetic control in real-time, a systems test was designed with a single participant. The controller acquired live kinematics, generated predictions using a pre-trained neural network, and demonstrated the capability to actuate the knee joint of a powered prosthesis for the treadmill walking task.

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  • 5.Complexity of locomotion activities in an outside-of-the-lab wearable motion capture dataset

    • 关键词:
    • Dynamical systems;Laboratories;Large dataset;Nonlinear dynamical systems;Wearable technology;Complexity;Human locomotions;Indoor environment;Locomotion activity;Motion capture;Movement analysis;On-field movement analyse;Out-of-the-lab dataset;Real-world scenario;Wearable motion capture
    • Sharma, Abhishek;Rombokas, Eric
    • 《Frontiers in Bioengineering and Biotechnology》
    • 2022年
    • 10卷
    • 期刊

    Gait complexity is widely used to understand risk factors for injury, rehabilitation, the performance of assistive devices, and other matters of clinical interest. We analyze the complexity of out-of-the-lab locomotion activities via measures that have previously been used in gait analysis literature, as well as measures from other domains of data analysis. We categorize these broadly as quantifying either the intrinsic dimensionality, the variability, or the regularity, periodicity, or self-similarity of the data from a nonlinear dynamical systems perspective. We perform this analysis on a novel full-body motion capture dataset collected in out-of-the-lab conditions for a variety of indoor environments. This is a unique dataset with a large amount (over 24 h total) of data from participants behaving without low-level instructions in out-of-the-lab indoor environments. We show that reasonable complexity measures can yield surprising, and even profoundly contradictory, results. We suggest that future complexity analysis can use these guidelines to be more specific and intentional about what aspect of complexity a quantitative measure expresses. This will become more important as wearable motion capture technology increasingly allows for comparison of ecologically relevant behavior with lab-based measurements. Copyright © 2022 Sharma and Rombokas.

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  • 6.Improving IMU-Based Prediction of Lower Limb Kinematics in Natural Environments Using Egocentric Optical Flow

    • 关键词:
    • Optical sensors; Sensors; Legged locomotion; Knee; Kinematics; Computervision; Visualization; Egocentric vision; deep learning; gaitprediction; prosthetics; regression;RECOGNITION SYSTEM; MOTION; ANKLE
    • Sharma, Abhishek;Rombokas, Eric
    • 《IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING》
    • 2022年
    • 30卷
    • 期刊

    We seek to predict knee and ankle motion using wearable sensors. These predictions could serve as target trajectories for a lower limb prosthesis. In this manuscript, we investigate the use of egocentric vision for improving performance over kinematic wearable motion capture. We present an out-of-the-lab dataset of 23 healthy subjects navigating public classrooms, a large atrium, and stairs for a total of almost 12 hours of recording. The prediction task is difficult because the movements include avoiding obstacles, other people, idiosyncratic movements such as traversing doors, and individual choices in selecting the future path. We demonstrate that using vision improves the quality of the predicted knee and ankle trajectories, especially in congested spaces and when the visual environment provides information that does not appear simply in the movements of the body. Overall, including vision results in 7.9% and 7.0% improvement in root mean squared error of knee and ankle angle predictions respectively. The improvement in Pearson Correlation Coefficient for knee and ankle predictions is 1.5% and 12.3% respectively. We discuss particular moments where vision greatly improved, or failed to improve, the prediction performance. We also find that the benefits of vision can be enhanced with more data. Lastly, we discuss challenges of continuous estimation of gait in natural, out-of-the-lab datasets.

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