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The effect of target and non-target similarity on neural classification performance: a boost from confidence

机译:目标和非目标相似性对神经分类性能的影响:置信度的提升

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摘要

Brain computer interaction (BCI) technologies have proven effective in utilizing single-trial classification algorithms to detect target images in rapid serial visualization presentation tasks. While many factors contribute to the accuracy of these algorithms, a critical aspect that is often overlooked concerns the feature similarity between target and non-target images. In most real-world environments there are likely to be many shared features between targets and non-targets resulting in similar neural activity between the two classes. It is unknown how current neural-based target classification algorithms perform when qualitatively similar target and non-target images are presented. This study address this question by comparing behavioral and neural classification performance across two conditions: first, when targets were the only infrequent stimulus presented amongst frequent background distracters; and second when targets were presented together with infrequent non-targets containing similar visual features to the targets. The resulting findings show that behavior is slower and less accurate when targets are presented together with similar non-targets; moreover, single-trial classification yielded high levels of misclassification when infrequent non-targets are included. Furthermore, we present an approach to mitigate the image misclassification. We use confidence measures to assess the quality of single-trial classification, and demonstrate that a system in which low confidence trials are reclassified through a secondary process can result in improved performance.
机译:事实证明,脑计算机交互(BCI)技术可以有效地利用单次试验分类算法在快速串行可视化演示任务中检测目标图像。尽管有许多因素会影响这些算法的准确性,但通常会忽略的一个关键方面是目标图像和非目标图像之间的特征相似性。在大多数现实环境中,目标和非目标之间可能存在许多共享特征,从而导致两类之间的神经活动相似。当呈现定性相似的目标图像和非目标图像时,目前基于神经的目标分类算法如何执行尚不清楚。这项研究通过比较两种情况下的行为和神经分类表现来解决这个问题:首先,当目标是在频繁的背景干扰因素中出现的唯一不频繁的刺激时;第二个是将目标与不常见的非目标一起呈现,这些非目标包含与目标相似的视觉特征。结果表明,当目标与类似的非目标一起呈现时,行为会较慢且准确性较差;此外,当包含很少的非目标对象时,单项试验分类会产生高级别的错误分类。此外,我们提出了一种减轻图像分类错误的方法。我们使用置信度度量来评估单项试验分类的质量,并证明通过次要过程对低置信度试验进行重新分类的系统可以提高性能。

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