Jove
Visualize
Contact Us
JoVE
x logofacebook logolinkedin logoyoutube logo
ABOUT JoVE
OverviewLeadershipBlogJoVE Help Center
AUTHORS
Publishing ProcessEditorial BoardScope & PoliciesPeer ReviewFAQSubmit
LIBRARIANS
TestimonialsSubscriptionsAccessResourcesLibrary Advisory BoardFAQ
RESEARCH
JoVE JournalMethods CollectionsJoVE Encyclopedia of ExperimentsArchive
EDUCATION
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab ManualFaculty Resource CenterFaculty Site
Terms & Conditions of Use
Privacy Policy
Policies

Related Concept Videos

Relative Motion Analysis using Rotating Axes01:25

Relative Motion Analysis using Rotating Axes

1.0K
Consider a component AB undergoing a linear motion. Along with a linear motion, point B also rotates around point A. To comprehend this complex movement, position vectors for both points A and B are established using a stationary reference frame.
However, to express the relative position of point B relative to point A, an additional frame of reference, denoted as x'y', is necessary. This additional frame not only translates but also rotates relative to the fixed frame, making it...
1.0K
Absolute Motion Analysis- General Plane Motion01:24

Absolute Motion Analysis- General Plane Motion

742
Visualize a drone, with its propellers spinning rapidly, hovering mid-air. The fascinating movements and operations of this drone can be comprehended by applying the principle of general plane motion.
As the drone's propellers rotate, an upward force is generated that counteracts the force of gravity, enabling the drone to lift off from the ground. This initial movement of the drone is along a straight path, representing a form of translational motion. In this phase, every point on the...
742
Muscles that Move the Forearm01:16

Muscles that Move the Forearm

6.0K
The muscles that move the forearms can be divided into four groups: forearm flexors, forearm extensors, forearm pronators, and forearm supinators. The flexors and extensors act on the elbow joint, while the pronators and supinators act on the radioulnar joints.
Forearm Flexors
The biceps brachii, brachialis, and brachioradialis are forearm flexors. The biceps brachii is made up of two heads. Its long head originates at the supraglenoid tubercle of the scapula, whereas that of the short head is...
6.0K

You might also read

Related Articles

Articles linked to this work by shared authors, journal, and citation graph.

Sort by
Same author

Multi-perspective analysis on the characteristics of composite non-point source pollution in typical hilly and plain urban aeras.

Journal of environmental sciences (China)·2026
Same author

Compression Therapy in Human Body Applications: A Systematic Review from Principles to Practice.

Annals of biomedical engineering·2026
Same author

The synthetic estradiol analog E0703 enhances <i>Akkermansia muciniphila</i> growth for radiation-induced intestinal damage repair.

mLife·2026
Same author

New insights into heterotrophic nitrification-aerobic denitrification during efficient pyridine degradation by Rhodococcus pyridinivorans WN2.

Bioresource technology·2026
Same author

Hemp seed oil mediates injury mitigation and anti-inflammation in radiated splenic T cells.

Phytomedicine : international journal of phytotherapy and phytopharmacology·2026
Same author

High-altitude hypoxia drives dentate gyrus neuronal vulnerability through an IL1α-astrocyte-SLC1A2 pathway.

Journal of neuroinflammation·2026
Same journal

Magnetic Resonance Spectroscopy Deep Learning with Magnetic Resonance Background Generator Enables In Vivo Metabolite Quantification of Hepatic Encephalopathy.

IEEE transactions on bio-medical engineering·2026
Same journal

Use of RPNIs and Implanted Electrodes for Prosthetic Wrist and Multi-Grip Hand Control during Functional Tasks: A Case Study.

IEEE transactions on bio-medical engineering·2026
Same journal

Healthy Limb Driven Prediction for Real Time Control of Unilateral Exoskeletons in Gait Rehabilitation.

IEEE transactions on bio-medical engineering·2026
Same journal

A Miniature Wearable Ultrasound System for Continuous Bladder Monitoring with Sleeping-Position-Robust Modeling Strategies.

IEEE transactions on bio-medical engineering·2026
Same journal

A Bi-objective Array Optimization Framework for Magnetocardiographic Source Imaging.

IEEE transactions on bio-medical engineering·2026
Same journal

A Dynamic Mutual Information Measure of Phase-Amplitude Coupling with Uncertainty Quantification.

IEEE transactions on bio-medical engineering·2026
See all related articles

Related Experiment Video

Updated: Apr 24, 2026

An Objective and Child-friendly Assessment of Arm Function by Using a 3-D Sensor
07:25

An Objective and Child-friendly Assessment of Arm Function by Using a 3-D Sensor

Published on: February 12, 2018

7.4K

Self-derived Motion Features from sEMG for Inferring 3D Forearm Trajectories.

Bangyu Lan, Dezhi Sun, Izadyar Tamadon

    IEEE Transactions on Bio-Medical Engineering
    |April 22, 2026
    PubMed
    Summary
    This summary is machine-generated.

    Researchers developed a new method using surface electromyography (sEMG) to derive motion features for direct 3D trajectory inference. This approach enhances human motion estimation in robotics and human-machine interaction applications.

    More Related Videos

    Capturing Dynamic Finger Gesturing with High-resolution Surface Electromyography and Computer Vision
    08:15

    Capturing Dynamic Finger Gesturing with High-resolution Surface Electromyography and Computer Vision

    Published on: March 28, 2025

    1.4K
    Estimation of Contact Regions Between Hands and Objects During Human Multi-Digit Grasping
    09:41

    Estimation of Contact Regions Between Hands and Objects During Human Multi-Digit Grasping

    Published on: April 21, 2023

    2.8K

    Related Experiment Videos

    Last Updated: Apr 24, 2026

    An Objective and Child-friendly Assessment of Arm Function by Using a 3-D Sensor
    07:25

    An Objective and Child-friendly Assessment of Arm Function by Using a 3-D Sensor

    Published on: February 12, 2018

    7.4K
    Capturing Dynamic Finger Gesturing with High-resolution Surface Electromyography and Computer Vision
    08:15

    Capturing Dynamic Finger Gesturing with High-resolution Surface Electromyography and Computer Vision

    Published on: March 28, 2025

    1.4K
    Estimation of Contact Regions Between Hands and Objects During Human Multi-Digit Grasping
    09:41

    Estimation of Contact Regions Between Hands and Objects During Human Multi-Digit Grasping

    Published on: April 21, 2023

    2.8K

    Area of Science:

    • Biomedical Engineering
    • Robotics
    • Human-Computer Interaction

    Background:

    • Surface electromyography (sEMG) is crucial for muscle activation pattern analysis.
    • Current methods often map sEMG to intermediate kinematic variables, limiting direct 3D motion trajectory inference.
    • Inferring 3D trajectories typically requires multimodal sensing, posing challenges for standalone sEMG applications.

    Purpose of the Study:

    • To propose a novel method for deriving extensible motion features directly from sEMG signals.
    • To enable direct inference of 3D motion trajectories using only sEMG data.
    • To enhance understanding of forearm motor control and improve robotic applications.

    Main Methods:

    • Developed a framework to extract novel, extensible motion features from sEMG signals.
    • Conducted in-vivo experiments with ten subjects performing nine distinct forearm motions.
    • Evaluated the performance of the derived features in inferring 3D motion trajectories.

    Main Results:

    • The self-derived motion features significantly improved 3D motion estimation performance by 10-15% across various metrics.
    • Demonstrated strong correlations between the derived features and the actual 3D trajectories.
    • Validated the effectiveness of the proposed sEMG-based feature extraction method.

    Conclusions:

    • The proposed method successfully derives critical motion features from sEMG for direct 3D trajectory inference.
    • This framework offers a unified approach for analyzing forearm motor control.
    • The findings have significant implications for advancing human motion estimation in wearable robotics and human-machine interaction.