Literature DB >> 29630571

Training set extension for SVM ensemble in P300-speller with familiar face paradigm.

Qi Li1, Kaiyang Shi1, Ning Gao1, Jian Li1, Ou Bai2.   

Abstract

BACKGROUND: P300-spellers are brain-computer interface (BCI)-based character input systems. Support vector machine (SVM) ensembles are trained with large-scale training sets and used as classifiers in these systems. However, the required large-scale training data necessitate a prolonged collection time for each subject, which results in data collected toward the end of the period being contaminated by the subject's fatigue.
OBJECTIVE: This study aimed to develop a method for acquiring more training data based on a collected small training set.
METHODS: A new method was developed in which two corresponding training datasets in two sequences are superposed and averaged to extend the training set. The proposed method was tested offline on a P300-speller with the familiar face paradigm.
RESULTS: The SVM ensemble with extended training set achieved 85% classification accuracy for the averaged results of four sequences, and 100% for 11 sequences in the P300-speller. In contrast, the conventional SVM ensemble with non-extended training set achieved only 65% accuracy for four sequences, and 92% for 11 sequences.
CONCLUSION: The SVM ensemble with extended training set achieves higher classification accuracies than the conventional SVM ensemble, which verifies that the proposed method effectively improves the classification performance of BCI P300-spellers, thus enhancing their practicality.

Entities:  

Keywords:  Brain-computer interface; P300 speller; SVM ensemble; familiar face paradigm; training set extension

Mesh:

Year:  2018        PMID: 29630571     DOI: 10.3233/THC-171074

Source DB:  PubMed          Journal:  Technol Health Care        ISSN: 0928-7329            Impact factor:   1.285


  1 in total

1.  Happy emotion cognition of bimodal audiovisual stimuli optimizes the performance of the P300 speller.

Authors:  Zhaohua Lu; Qi Li; Ning Gao; Jingjing Yang; Ou Bai
Journal:  Brain Behav       Date:  2019-11-15       Impact factor: 2.708

  1 in total

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