Title
Decoding Syllables from Human fMRI Activity
Abstract
Language plays essential roles in human cognition and social communication, and therefore technology of reading out speech using non-invasively measured brain activity will have both scientific and clinical merits. Here, we examined whether it is possible to decode each syllable from human fMRI activity. Four healthy subjects participated in the experiments. In a decoding session, the subjects repeatedly uttered a syllable presented on a screen at 3Hz for a 12-s block. Nine different syllables are presented in a single experimental run which was repeated 8 times. We also specified the voxels which showed articulation-related activities by utterance of all the syllables in Japanese phonology in a conventional task-rest sequence. Then, we used either all of these voxels or a part of these voxels that exist in anatomically specified ROIs (M1, cerebellum) during decoding sessions as data samples for training and testing a decoder (linear support vector machine) that classifies brain activity patterns for different syllables. To evaluate decoding performance, we performed cross-validation by testing the sample of one decoding session using a decoder trained with the samples of the remaining sessions. As a result, syllables were correctly decoded at above-chance levels. The results suggest the possibility of using non-invasively measured brain activity to read out the intended speech of disabled patients in speech motor control.
Year
DOI
Venue
2007
10.1007/978-3-540-69162-4_102
ICONIP
Keywords
Field
DocType
decoding performance,human fmri activity,brain activity pattern,decoding session,intended speech,different syllable,anatomically specified rois,brain activity,speech motor control,decoding syllables,articulation-related activity,brain machine interface,support vector machine,social communication,motor control,cross validation,human cognition
Voxel,Computer science,Brain–computer interface,Brain activity and meditation,Speech recognition,Motor control,Syllable,Natural language processing,Artificial intelligence,Decoding methods,Japanese phonology,Cognition
Conference
Volume
ISSN
Citations 
4985
0302-9743
0
PageRank 
References 
Authors
0.34
3
6
Name
Order
Citations
PageRank
Otaka, Yohei1353.21
Rieko Osu212120.42
Mitsuo Kawato32306447.03
Meigen Liu451.15
Satoshi Murata500.34
Yukiyasu Kamitani612317.03