Maayan Kahlon

Maayan Kahlon

Israel
1K followers 500+ connections

Activity

Join now to see all activity

Experience

  • Verbit.ai Graphic
  • -

    Israel

  • -

    Tel Aviv - Jaffa, Tel Aviv District, Israel

  • -

    Netanya , israel

  • -

    Israel

  • -

Education

Publications

  • Classification of human hand movements based on EMG signals using nonlinear dimensionality reduction and data fusion techniques

    Expert Systems with Applications

    Surface EMG is non-invasive signal acquisition technique that plays a central role in many application, including clinical diagnostics, control for prosthetic devices and for human-machine interactions. The processing typically begins with a feature extraction step, which may be followed by the application of a dimensionality reduction technique. The obtained reduced features are input for a machine learning classifier. The constructed machine learning model may then classify new recorded…

    Surface EMG is non-invasive signal acquisition technique that plays a central role in many application, including clinical diagnostics, control for prosthetic devices and for human-machine interactions. The processing typically begins with a feature extraction step, which may be followed by the application of a dimensionality reduction technique. The obtained reduced features are input for a machine learning classifier. The constructed machine learning model may then classify new recorded movements.

    The objectives of this study were first to compare between the performances of a nonlinear dimensionality technique to a standard linear dimensionality method when applied for single subject EMG based hand movement classification, and to examined their performances in case of limited amount of training data samples. The second objective was to propose an algorithm for multi-subjects classification that utilized a data alignment step for overcoming the large variability between subjects.

    The data set included EMG signals from 5 subjects who perform 6 different hand movements. STFT was calculated for feature extraction, principal component analysis (PCA) and diffusion maps (DM) were compared for dimension reductions. An affine transformation for aligning between the reduced feature spaces of two subjects, was investigated. K-nearest neighbors (KNN) was used for single and multi-subject classification.

    The results of this study clearly show that the DM outperformed the PCA in case of limited training data. In addition, the multi-subject classification approach, which utilizes dimension reduction methods along with an alignment algorithm enable robust classification of a new subject based on another subjects’ data sets. The proposed framework is general and can be adopted for many EMG classification task.

    Other authors
    See publication

Courses

  • CVI

    -

  • Chemistry

    -

  • Clinical Engineering - Clinical Trials

    -

  • Electronics

    -

  • Fluid Mechanics

    -

  • Image processing

    -

  • Physiological mechanics

    -

  • Physiology

    -

  • Radiation in Medicine

    -

  • Signal processing

    -

  • Solid Mechanics

    -

Projects

  • Classification of Infrasonic Atmospheric Events Using Electromagnetic Pulse Analysis

    -

    Infrasound (IS) waves are sound waves below the audible sound and IS is the main technology aimed at detecting atmospheric nuclear explosions. This study used data from single EMP antenna and data from known lists of IS events to examine coincidence of IS events with detected Electromagnetic Pulse (EMP) events to reduce false alarms of nuclear explosions. The study consists of two parts. The first part is the pre-processing and It mainly focused on the identification and segmentation of the…

    Infrasound (IS) waves are sound waves below the audible sound and IS is the main technology aimed at detecting atmospheric nuclear explosions. This study used data from single EMP antenna and data from known lists of IS events to examine coincidence of IS events with detected Electromagnetic Pulse (EMP) events to reduce false alarms of nuclear explosions. The study consists of two parts. The first part is the pre-processing and It mainly focused on the identification and segmentation of the EMP events from the raw data. It also includes the calculation of azimuth and the fusion of the EMP events with IS events to find coincidence between them. The second part is the machine learning algorithm. This algorithm uses feature extraction and PCA to classify the coincided EMPs as either lightning or a potential nuclear explosion.
    An article on this research is on review.

  • EMG based classification of human hand movements

    -

    Other creators

Languages

  • English

    Full professional proficiency

  • Hebrew

    Native or bilingual proficiency

More activity by Maayan

View Maayan’s full profile

  • See who you know in common
  • Get introduced
  • Contact Maayan directly
Join to view full profile

People also viewed

Explore collaborative articles

We’re unlocking community knowledge in a new way. Experts add insights directly into each article, started with the help of AI.

Explore More

Others named Maayan Kahlon

Add new skills with these courses