| Literature DB >> 28706472 |
Lili Li1, Guanghua Xu1,2, Feng Zhang1, Jun Xie1, Min Li1.
Abstract
Brain computer interfaces provide a novel channel for the communication between brain and output devices. The effectiveness of the brain computer interface is based on the classification accuracy of single trial brain signals. The common spatial pattern (CSP) algorithm is believed to be an effective algorithm for the classification of single trial brain signals. As the amplitude feature for spatial projection applied by this algorithm is based on a broad frequency bandpass filter (mainly 5-30 Hz) in which the frequency band is often selected by experience, the CSP is sensitive to noise and the influence of other irrelevant information in the selected broad frequency band. In this paper, to improve the CSP, a novel relevant feature integration and extraction algorithm is proposed. Before projecting, we integrated the motor relevant information to suppress the interference of noise and irrelevant information, as well as to improve the spatial difference for projection. The algorithm was evaluated with public datasets. It showed significantly better classification performance with single trial electroencephalography (EEG) data, increasing by 6.8% compared with the CSP.Entities:
Keywords: brain computer interface; classification; feature extraction; motor imagery; single trial
Year: 2017 PMID: 28706472 PMCID: PMC5489604 DOI: 10.3389/fnins.2017.00371
Source DB: PubMed Journal: Front Neurosci ISSN: 1662-453X Impact factor: 4.677
Summary of the datasets.
| IIa | 22 | Left vs. right hand | A01 | 1 | 138 |
| A02 | 2 | 136 | |||
| A03 | 3 | 137 | |||
| A04 | 4 | 129 | |||
| A05 | 5 | 129 | |||
| A06 | 6 | 113 | |||
| A07 | 7 | 133 | |||
| A08 | 8 | 132 | |||
| A09 | 9 | 116 | |||
| IIIa | 60 | Left vs. right hand | k3b | 10 | 90 |
| k6b | 11 | 58 | |||
| l1b | 12 | 60 |
Figure 1The electrode locations of the datasets.
Figure 2The results of the SICA on simulated data. The frequency spectrum information of six channels are shown from channel 1 to channel 6. Component 1 and component 2 are the ICs extracted.
Figure 3The flow chart for data processing.
Figure 4The ERD/ERS maps of subject five on left hand motor imagery. X-axis and Y-axis represent time and frequency, respectively.
Classification accuracies (%) of subjects.
| IIa | A01 | 84.3 (1.58) | 87.1 (2.63) | 85.2 (3.05) | 86.1 | 70.8 | 90.2 |
| A02 | 79.4 (3.27) | 86.8 (3.62) | 81.0 (2.63) | 52.0 | 50 | 52.0 | |
| A03 | 82.4 (2.89) | 89.7 (1.39) | 89.5 (3.56) | 86.1 | 61.8 | 95.1 | |
| A04 | 82.3 (3.15) | 83.9 (1.94) | 81.1 (2.73) | 65.9 | 55.5 | 69.4 | |
| A05 | 89.1 (2.34) | 90.6 (2.75) | 86.8 (1.99) | 68.0 | 49.3 | 56.9 | |
| A06 | 83.9 (2.78) | 83.9 (3.11) | 91.9 (4.53) | 66.6 | 56.2 | 70.1 | |
| A07 | 74.2 (2.92) | 86.4 (2.84) | 80.5 (3.50) | 75.0 | 57.6 | 78.4 | |
| A08 | 83.3 (2.59) | 89.4 (2.70) | 89.0 (3.15) | 95.1 | 63.1 | 97.2 | |
| A09 | 74.1 (2.22) | 96.3 (8.24) | 76.8 (4.99) | 93.0 | 76.3 | 91.6 | |
| IIIa | k3b | 93.5 (2.76) | 91.3 (2.01) | 87.5 (2.50) | 95.5 | 78.8 | 76.6 |
| k6b | 80.0 (5.96) | 90.0 (2.97) | 80.0 (4.39) | 55.1 | 63.7 | 56.8 | |
| l1b | 83.3 (2.98) | 96.7 (6.05) | 100.0 (2.57) | 95.0 | 76.6 | 51.6 | |
| Average | 82.5 (3.0) | 89.3 (3.4) | 85.8 (3.3) | 77.8 (16.0) | 63.3 (10.3) | 73.8 (17.0) |
Kappa scores of BCI competition IV dataset IIa.
| IIa | A01 | 0.556 (0.0316) | 0.664 (0.0526) | 0.687 (0.0579) | 0.747 |
| A02 | 0.599 (0.0654) | 0.776 (0.0724) | 0.689 (0.0359) | 0.416 | |
| A03 | 0.539 (0.0579) | 0.776 (0.0277) | 0.560 (0.0712) | 0.824 | |
| A04 | 0.419 (0.0629) | 0.732 (0.0388) | 0.771 (0.0546) | 0.400 | |
| A05 | 0.656 (0.0469) | 0.838 (0.0549) | 0.742 (0.0399) | 0.608 | |
| A06 | 0.490 (0.0556) | 0.701 (0.0622) | 0.607 (0.0906) | 0.309 | |
| A07 | 0.430 (0.0585) | 0.758 (0.0568) | 0.668 (0.0700) | 0.849 | |
| A08 | 0.411 (0.0518) | 0.735 (0.0540) | 0.615 (0.0631) | 0.787 | |
| A09 | 0.372 (0.0455) | 0.717 (0.1648) | 0.507 (0.0998) | 0.772 | |
| Average | 0.497 (0.0528) | 0.744 (0.0649) | 0.650 (0.0648) | 0.635 (0.208) |
Figure 5Topographical view of feature extraction algorithm's results. (A) Topographical view of average time-frequency representation of ERD/ERS values of hand imagery in 5–15 Hz on the fifth subject. (B) Topographic distribution of average power after bandpass filter from 5 to 30 Hz. (C) Topographic distribution of average power after feature extraction and integration method.
Figure 6Classification accuracy with varied training datasets from 2 to 50 of the classifier in 12 subjects.
Average classification accuracies (%) and standard deviation of accuracy (%) of the datasets IIa and IIIa in different steps.
| IIa | A01 | 75.2 (2.7) | 81.7 (3.6) |
| A02 | 69.0 (2.5) | 88.3 (2.5) | |
| A03 | 75.3 (2.0) | 89.1 (1.8) | |
| A04 | 70.48 (2.7) | 84.8 (2.5) | |
| A05 | 82.1 (3.0) | 88.8 (2.1) | |
| A06 | 78.3 (1.7) | 82.3 (4.1) | |
| A07 | 68.3 (1.3) | 85.2 (3.9) | |
| A08 | 73.8 (2.9) | 86.4 (3.3) | |
| A09 | 65.9 (2.4) | 86.0 (2.9) | |
| IIIa | k3b | 82.8 (8.9) | 92.9 (6.8) |
| k6b | 69.0 (6.0) | 88.2 (1.2) | |
| l1b | 84.8 (3.0) | 86.9 (1.8) | |
| Average | 74.6 (3.3) | 86.7 (3.0) |
Figure 7The fifth subject's classification result of two classes on f. The circles and crosses indicated the left and right motor imagery.
Figure 8Statistical results of f under SCCSP and CSP on two classes.