Decoding Imagined Speech and Computer Control using Brain Waves
Abhiram Singh, Ashwin Gumaste

TL;DR
This paper presents a machine learning approach to decode imagined speech brain waves for computer control, achieving high accuracy and outperforming existing methods on multiple tasks.
Contribution
The study introduces a novel pipeline using covariance matrices, tangent space projection, PCA, and neural networks for decoding imagined speech, enabling effective BCI control.
Findings
Maximum 85% accuracy in binary imagined speech classification
94% accuracy in distinguishing imagined speech from rest state
21 bits-per-minute information transfer rate
Abstract
In this work, we explore the possibility of decoding Imagined Speech brain waves using machine learning techniques. We propose a covariance matrix of Electroencephalogram channels as input features, projection to tangent space of covariance matrices for obtaining vectors from covariance matrices, principal component analysis for dimension reduction of vectors, an artificial feed-forward neural network as a classification model and bootstrap aggregation for creating an ensemble of neural network models. After the classification, two different Finite State Machines are designed that create an interface for controlling a computer system using an Imagined Speech-based BCI system. The proposed approach is able to decode the Imagined Speech signal with a maximum mean classification accuracy of 85% on binary classification task of one long word and a short word. We also show that our proposed…
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