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Subject Selection on a Riemannian Manifold for Unsupervised Cross-subject Seizure Detection

Authors :
Bolagh, Samaneh Nasiri Ghosheh
Clifford, Gari. D.
Publication Year :
2017

Abstract

Inter-subject variability between individuals poses a challenge in inter-subject brain signal analysis problems. A new algorithm for subject-selection based on clustering covariance matrices on a Riemannian manifold is proposed. After unsupervised selection of the subsets of relevant subjects, data in a cluster is mapped to a tangent space at the mean point of covariance matrices in that cluster and an SVM classifier on labeled data from relevant subjects is trained. Experiment on an EEG seizure database shows that the proposed method increases the accuracy over state-of-the-art from 86.83% to 89.84% and specificity from 87.38% to 89.64% while reducing the false positive rate/hour from 0.8/hour to 0.77/hour.<br />Comment: Cross-Subject Learning, Inter-Subject Variability, Unsupervised Subject-Selection, Riemannian Manifold, Seizure Detection, EEG, NIPS ML4H 2017

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1712.00465
Document Type :
Working Paper