Author
Listed:
- Zhimin Lin
- Ying Zeng
- Li Tong
- Hangming Zhang
- Chi Zhang
- Bin Yan
Abstract
The application of electroencephalogram (EEG) generated by human viewing images is a new thrust in image retrieval technology. A P300 component in the EEG is induced when the subjects see their point of interest in a target image under the rapid serial visual presentation (RSVP) experimental paradigm. We detected the single-trial P300 component to determine whether a subject was interested in an image. In practice, the latency and amplitude of the P300 component may vary in relation to different experimental parameters, such as target probability and stimulus semantics. Thus, we proposed a novel method, Target Recognition using Image Complexity Priori (TRICP) algorithm, in which the image information is introduced in the calculation of the interest score in the RSVP paradigm. The method combines information from the image and EEG to enhance the accuracy of single-trial P300 detection on the basis of traditional single-trial P300 detection algorithm. We defined an image complexity parameter based on the features of the different layers of a convolution neural network (CNN). We used the TRICP algorithm to compute for the complexity of an image to quantify the effect of different complexity images on the P300 components and training specialty classifier according to the image complexity. We compared TRICP with the HDCA algorithm. Results show that TRICP is significantly higher than the HDCA algorithm (Wilcoxon Sign Rank Test, p
Suggested Citation
Zhimin Lin & Ying Zeng & Li Tong & Hangming Zhang & Chi Zhang & Bin Yan, 2017.
"Method for enhancing single-trial P300 detection by introducing the complexity degree of image information in rapid serial visual presentation tasks,"
PLOS ONE, Public Library of Science, vol. 12(12), pages 1-16, December.
Handle:
RePEc:plo:pone00:0184713
DOI: 10.1371/journal.pone.0184713
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