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Classification of Vowels from Imagined Speech with Convolutional Neural Networks
Markus-Oliver Tamm
, Yar Muhammad
, Naveed Muhammad
Department of Computing & Games
Research output
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peer-review
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Keyphrases
Brain-computer Interface
16%
Classification Accuracy
33%
Convolutional Neural Network
100%
Convolutional Neural Network Model
16%
Deep Neural Network Classifier
16%
Efficient Neural Network
16%
Electroencephalography
50%
Imagined Speech
100%
Machine Learning Techniques
16%
Neural Network
16%
Performance Metrics
16%
Physically Impaired
16%
Preprocessing Techniques
16%
Replicated Study
16%
Research Use
16%
Signal Pattern
16%
Smart Devices
33%
Speech Classification
16%
Transfer Learning
16%
Transfer Learning Model
16%
Vowels
100%
Computer Science
Classification Accuracy
50%
Computer Interface
25%
Convolutional Neural Network
100%
Machine Learning Technique
25%
Neural Network
50%
Neural Network Model
25%
Performance Metric
25%
Preprocessing
50%
Processing Method
25%
Smart Device
50%
Transfer Learning
50%