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    •   BracU IR
    • School of Data and Sciences (SDS)
    • Department of Computer Science and Engineering (CSE)
    • Thesis & Report, BSc (Computer Science and Engineering)
    • View Item
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    EMG controlled bionic robotic arm using artificial intelligence and machine learning

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    16301122, 16101050, 16301050, 16301173_CSE.pdf (16.63Mb)
    Date
    2020-04
    Publisher
    Brac University
    Author
    Rupom, Farhan Fuad
    Johan, Gazi Musa Al
    Jannat, Shafaitul
    Tamanna, Farjana Ferdousi
    Metadata
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    URI
    http://hdl.handle.net/10361/14728
    Abstract
    Electromyography is a unique approach for recording and analyzing the electrical activity generated by muscles, and a Myo-electric controlled prosthetic limb is an outwardly controlled artificial limb which is controlled by the electrical signals instinctively produced by the muscle system itself. Artificial Intelligence and Machine learning is very powerful in every technological field along with biomedical field. The purpose of this work is to utilize the power of Machine learning and Deep learning for predicting and recognizing hand gestures for prosthetic hand from collecting data of muscle activities. Although this technology already exists in the technological world but those are very costly and not available in developing countries. So, designing a cost effective prosthetic hand with the maximize accuracy is the major focus and objective of this work. We have also used a data set recorded by MyoWare Muscle Sensor which represents uninterrupted readings from 8 sensors. We have used Deep learning with the data set for predicting the following gestures which are handopen, hand-close, spherical-grip, and fine-pinch. Then we used some algorithms of Machine Learning which are K-nearest Neighbor (KNN), Support Vector Machine (SVM), and also the combination of KNN and SVM both for feature classification on data recorded with the 8-electrode surface EMG (sEMG) MyoWare Muscle Sensor. Using the combination of SVM and KNN We have accomplished a real time test accuracy of 96.33 percent at classifying the four gestures of our prosthetic hand. This paper also represents 3D modeling of the robotic hand and its control system using Autodesk 3D’s Max software, EMG MyoWare Muscle Sensor, Machine Learning and Deep Learning.
    Keywords
    Electromyography; Hand gestures; K-nearest Neighbor (KNN); Support Vector Machine (SVM); EMG MyoWare Muscle Sensor; Autodesk 3D Max software; Prosthetic
     
    LC Subject Headings
    Biomaterials.; Artificial intelligence.; Machine learning.
     
    Description
    This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science and Engineering, 2020.
     
    Cataloged from PDF version of thesis.
     
    Includes bibliographical references (pages 45-47).
    Department
    Department of Computer Science and Engineering, Brac University
    Collections
    • Thesis & Report, BSc (Computer Science and Engineering)

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