English

Ensemble Machine Learning Model for Inner Speech Recognition: A Subject-Specific Investigation

Signal Processing 2024-12-25 v1 Computation and Language

Abstract

Inner speech recognition has gained enormous interest in recent years due to its applications in rehabilitation, developing assistive technology, and cognitive assessment. However, since language and speech productions are a complex process, for which identifying speech components has remained a challenging task. Different approaches were taken previously to reach this goal, but new approaches remain to be explored. Also, a subject-oriented analysis is necessary to understand the underlying brain dynamics during inner speech production, which can bring novel methods to neurological research. A publicly available dataset, Thinking Out Loud Dataset, has been used to develop a Machine Learning (ML)-based technique to classify inner speech using 128-channel surface EEG signals. The dataset is collected on a Spanish cohort of ten subjects while uttering four words (Arriba, Abajo, Derecha, and Izquierda) by each participant. Statistical methods were employed to detect and remove motion artifacts from the Electroencephalography (EEG) signals. A large number (191 per channel) of time-, frequency- and time-frequency-domain features were extracted. Eight feature selection algorithms are explored, and the best feature selection technique is selected for subsequent evaluations. The performance of six ML algorithms is evaluated, and an ensemble model is proposed. Deep Learning (DL) models are also explored, and the results are compared with the classical ML approach. The proposed ensemble model, by stacking the five best logistic regression models, generated an overall accuracy of 81.13% and an F1 score of 81.12% in the classification of four inner speech words using surface EEG signals. The proposed framework with the proposed ensemble of classical ML models shows promise in the classification of inner speech using surface EEG signals.

Keywords

Cite

@article{arxiv.2412.17824,
  title  = {Ensemble Machine Learning Model for Inner Speech Recognition: A Subject-Specific Investigation},
  author = {Shahamat Mustavi Tasin and Muhammad E. H. Chowdhury and Shona Pedersen and Malek Chabbouh and Diala Bushnaq and Raghad Aljindi and Saidul Kabir and Anwarul Hasan},
  journal= {arXiv preprint arXiv:2412.17824},
  year   = {2024}
}

Comments

13 Figures, 3 Tables

R2 v1 2026-06-28T20:47:12.458Z