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Towards the automated localisation of targets in rapid image-sifting by collaborative brain-computer interfaces

机译:通过协作式人机界面实现快速图像筛选中目标的自动定位

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摘要

The N2pc is a lateralised Event-Related Potential (ERP) that signals a shift of attention towards the location of a potential object of interest. We propose a single-trial target-localisation collaborative Brain-Computer Interface (cBCI) that exploits this ERP to automatically approximate the horizontal position of targets in aerial images. Images were presented by means of the rapid serial visual presentation technique at rates of 5, 6 and 10 Hz. We created three different cBCIs and tested a participant selection method in which groups are formed according to the similarity of participants’ performance. The N2pc that is elicited in our experiments contains information about the position of the target along the horizontal axis. Moreover, combining information from multiple participants provides absolute median improvements in the area under the receiver operating characteristic curve of up to 21% (for groups of size 3) with respect to single-user BCIs. These improvements are bigger when groups are formed by participants with similar individual performance, and much of this effect can be explained using simple theoretical models. Our results suggest that BCIs for automated triaging can be improved by integrating two classification systems: one devoted to target detection and another to detect the attentional shifts associated with lateral targets.
机译:N2pc是横向化的事件相关电位(ERP),表示注意力转移到潜在感兴趣对象的位置。我们提出了一种单目标目标定位协作式脑机接口(cBCI),该接口利用此ERP来自动估算航空影像中目标的水平位置。图像通过快速串行视觉呈现技术以5、6和10 Hz的速率呈现。我们创建了三种不同的cBCI,并测试了参与者选择方法,该方法根据参与者表现的相似性来分组。在我们的实验中得出的N2pc包含有关目标沿水平轴的位置的信息。而且,结合来自多个参与者的信息,相对于单用户BCI,接收器工作特性曲线下方的面积绝对提高了21%(对于大小为3的组)。当由具有相似个人表现的参与者组成小组时,这些改进会更大,并且可以使用简单的理论模型来解释这种效果。我们的结果表明,可以通过集成两个分类系统来改进用于自动分类的BCI:一个分类系统专门用于目标检测,另一个分类系统用于检测与横向目标相关的注意力转移。

著录项

  • 期刊名称 other
  • 作者单位
  • 年(卷),期 -1(12),5
  • 年度 -1
  • 页码 e0178498
  • 总页数 28
  • 原文格式 PDF
  • 正文语种
  • 中图分类
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