RSVP-based BCI for inconspicuous targets: detection, localization, and modulation of attention

Author:

Zhou QianORCID,Zhang Qi,Wang Baozeng,Yang Yang,Yuan Zijian,Li Siwei,Zhao Yuwei,Zhu Ying,Gao Zhongbao,Zhou Jin,Wang ChangyongORCID

Abstract

Abstract Objective. While brain–computer interface (BCI) based on rapid serial visual presentation (RSVP) is widely used in target detection, patterns of event-related potential (ERP), as well as the performance on detecting inconspicuous targets remain unknown. Moreover, participant-screening methods to excluded ‘BCI-blind’ users are still lacking. Approach. A RSVP paradigm was designed with targets of varied concealment, size, and location. ERPs (e.g. P300 and N2pc) and target detection accuracy were compared among these conditions. The relationship between participants’ attention scores and target detection accuracy was also analyzed to test attention level as a criterion for participant screening. Main results. Statistical analysis showed that the conditions of target concealment and size significantly influenced ERP. In particular, ERP for inconspicuous targets, such as concealed and small targets, exhibited lower amplitudes and longer latencies. In consistent, the accuracy of detection in inconspicuous condition was significantly lower than that of conspicuous condition. In addition, a significant association was found between attention scores and target detection accuracy for camouflaged targets. Significance. The study was the first to address ERP features among multiple dimensions of concealment, size, and location. The conclusion provided insights into the relationship between ERP decoding and properties of targets. In addition, the association between attention scores and detection accuracy implied a promising method in screening well-behaved participants for camouflaged target detection.

Funder

National Natural Science Foundation of China

Beijing Nova Program

STI 2030-Major Projects

Publisher

IOP Publishing

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