Spatial proximity based subspace decomposition for movement direction decoding of Local Field Potentials

Local Field Potentials (LFP) provides higher spatial resolution and SNR than EEG data and can be used to construct a Brain Computer Interface. In [7], we have shown that movement direction decoding can be done with about 90 % classification accuracy using spatial patterns (CSP) and Error Correction Output Codes (ECOC). However, a major challenge in this study is to make this method more robust to inter-session variability of the LFP data, where state-of-the-art results are in the high 70 percent. In [8], we have demonstrated that LFP features that are recurrent across sessions can be extracted using a subspace learning method and used to improve the CSP +ECOC classifier. In this work, we propose an extension of the subspace learning method that exploits the spatial topology of the channels. This allows us to learn spatially diverse features, while previously the subspaces were being learned independently of the channel layout. We proposed a method where a block of samples from neighboring channels is used to find the subspaces and decode the directions. This approach is analogous to analyzing an 8x8 pixel map in image processing. Furthermore, this method allows a spatio-temporal classification, and it is indeed observed that different directions were providing higher accuracies at different time blocks. The proposed method can boosts the accuracy by at least 6% to bring classification to the mid 80 percent. Furthermore, we show early results where adding a pilot trial from the test session can be used as a calibration to further improve the spatio-temporal classification.

[1]  Motoaki Kawanabe,et al.  On-line learning in changing environments with applications in supervised and unsupervised learning , 2002, Neural Networks.

[2]  G. Pfurtscheller,et al.  Optimal spatial filtering of single trial EEG during imagined hand movement. , 2000, IEEE transactions on rehabilitation engineering : a publication of the IEEE Engineering in Medicine and Biology Society.

[3]  Ahmed H. Tewfik,et al.  Movement direction decoding with spatial patterns of local field potentials , 2009, 2009 4th International IEEE/EMBS Conference on Neural Engineering.

[4]  Motoaki Kawanabe,et al.  Invariant Common Spatial Patterns: Alleviating Nonstationarities in Brain-Computer Interfacing , 2007, NIPS.

[5]  Winnie Jensen,et al.  On variability and use of rat primary motor cortex responses in behavioral task discrimination , 2006, Journal of neural engineering.

[6]  Neil D. Lawrence,et al.  Dataset Shift in Machine Learning , 2009 .

[7]  Ahmed H. Tewfik,et al.  Overcoming measurement time variability in brain machine interface , 2009, 2009 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[8]  A. P. Georgopoulos,et al.  Neuronal population coding of movement direction. , 1986, Science.

[9]  G. Pfurtscheller,et al.  Brain-Computer Interfaces for Communication and Control. , 2011, Communications of the ACM.