Classification of Reach and Grasp Motions from EEG Signals using Deep Convolutional Neural Networks (CNN) / (Record no. 607925)

000 -LEADER
fixed length control field 02766nam a22001577a 4500
082 ## - DEWEY DECIMAL CLASSIFICATION NUMBER
Classification number 610
100 ## - MAIN ENTRY--PERSONAL NAME
Personal name Sultan, Hajrah
245 ## - TITLE STATEMENT
Title Classification of Reach and Grasp Motions from EEG Signals using Deep Convolutional Neural Networks (CNN) /
Statement of responsibility, etc. Hajrah Sultan
264 ## - PRODUCTION, PUBLICATION, DISTRIBUTION, MANUFACTURE, AND COPYRIGHT NOTICE
Place of production, publication, distribution, manufacture Islamabad :
Name of producer, publisher, distributor, manufacturer SMME- NUST;
Date of production, publication, distribution, manufacture, or copyright notice 2022.
300 ## - PHYSICAL DESCRIPTION
Extent 73p.
Other physical details Soft Copy
Dimensions 30cm
500 ## - GENERAL NOTE
General note Classification of neural correlates of hand motions from EEG signals recently gained attention of<br/>researchers for the development of BCI systems for persons suffered from stroke, spinal cord<br/>injury who are not able to do voluntary movements or person with amputated arm or legs.<br/>Commonly LDA, SVM and K-NN models are used for the classification of hand motions, CNN<br/>and hybrid models are also used but most methods include the complex methods or preprocessing of EEG data and extraction of time or frequency domain features from the preprocessed signals which is a time consuming and lack flexibility because the EEG signals vary<br/>from human to human. In this thesis a Deep CNN model for end-to-end0learning of neural<br/>corelates for reach and grasp actions is introduced, aiming to increase rate of recognition &<br/>balanced classification0accuracy throughout all the subjects. A new model of CNN for<br/>movement classification is proposed that can also be used on the edge devices because of its<br/>smaller size for the development of BCI systems. In the proposed model separable convolutional<br/>blocks are used which reduce the number of parameters and hence the size of model also<br/>decreases. The dataset that is used for the testing of model is BNCI Horizon 2020 Reach and<br/>Grasp action dataset that is publicly available dataset. The dataset is also tested on 3 machine<br/>learning models LDA, SVM and K-NN are used, in which input is given in the form of time<br/>domain feature set the average accuracies achieved on these models are 60.77 (±3.80 STD),<br/>66.73 (±2.86 STD), and 79.81 (±3.11 STD) respectively on the unseen dataset. Then the dataset<br/>is tasted on proposed Deep learning model along with DeepConvNet and EffNet models. The<br/>proposed model achieves the average classification accuracy of 92.44 (±4.13 STD), 92.9 (±4.23<br/>STD) and 81.7(±5.68 STD). The model proposed achieves the same accuracy as DeepConvNet,<br/>but the size of proposed model is far smaller than the DeepConvNet model. Results shows that<br/>the proposed model shows the improved results with less variation of results within the subjects.<br/>Which will become helpful in the creation of real time BCI systems.
650 ## - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name entry element MS Biomedical Engineering (BME)
700 ## - ADDED ENTRY--PERSONAL NAME
Personal name Supervisor : Dr. Muhammad Asim Waris
856 ## - ELECTRONIC LOCATION AND ACCESS
Uniform Resource Identifier <a href=" http://10.250.8.41:8080/xmlui/handle/123456789/31812"> http://10.250.8.41:8080/xmlui/handle/123456789/31812</a>
942 ## - ADDED ENTRY ELEMENTS (KOHA)
Source of classification or shelving scheme
Koha item type Thesis
Holdings
Withdrawn status Permanent Location Current Location Shelving location Date acquired Full call number Barcode Koha item type
  School of Mechanical & Manufacturing Engineering (SMME) School of Mechanical & Manufacturing Engineering (SMME) E-Books 02/20/2024 610 SMME-TH-804 Thesis
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