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Active visual search in non-stationary scenes: coping with temporal variability and uncertainty

机译:在非平稳场景中进行主动视觉搜索:应对时间变化和不确定性

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Objective. State-of-the-art experiments for studying neural processes underlying visual cognition often constrain sensory inputs (e.g., static images) and our behavior (e.g., fixed eye-gaze, long eye fixations), isolating or simplifying the interaction of neural processes. Motivated by the non-stationarity of our natural visual environment, we investigated the electroencephalography (EEG) correlates of visual recognition while participants overtly performed visual search in non-stationary scenes. We hypothesized that visual effects (such as those typically used in human-computer interfaces) may increase temporal uncertainty (with reference to fixation onset) of cognition-related EEG activity in an active search task and therefore require novel techniques for single-trial detection. Approach. We addressed fixation-related EEG activity in an active search task with respect to stimulus-appearance styles and dynamics. Alongside popping-up stimuli, our experimental study embraces two composite appearance styles based on fading-in, enlarging, and motion effects. Additionally, we explored whether the knowledge obtained in the pop-up experimental setting can be exploited to boost the EEG-based intention-decoding performance when facing transitional changes of visual content. Main results. The results confirmed our initial hypothesis that the dynamic of visual content can increase temporal uncertainty of the cognition-related EEG activity in active search with respect to fixation onset. This temporal uncertainty challenges the pivotal aim to keep the decoding performance constant irrespective of visual effects. Importantly, the proposed approach for EEG decoding based on knowledge transfer between the different experimental settings gave a promising performance. Significance. Our study demonstrates that the non-stationarity of visual scenes is an important factor in the evolution of cognitive processes, as well as in the dynamic of ocular behavior (i.e., dwell time and fixation duration) in an active search task. In addition, our method to improve single-trial detection performance in this adverse scenario is an important step in making brain-computer interfacing technology available for human-computer interaction applications.
机译:目的。用于研究基于视觉认知的神经过程的最新实验通常会限制感觉输入(例如静态图像)和我们的行为(例如固定的目光,长时间的注视),隔离或简化神经过程的交互作用。由于我们自然视觉环境的不平稳性,我们调查了视觉识别的脑电图(EEG)相关性,而参与者在不平稳的场景中公开进行了视觉搜索。我们假设视觉效果(例如通常在人机界面中使用的效果)可能会增加主动搜索任务中与认知有关的脑电图活动的时间不确定性(以固定为参考),因此需要进行单次试验的新颖技术。方法。我们针对刺激外观样式和动力学在主动搜索任务中解决了与固定相关的脑电图活动。除了弹出刺激之外,我们的实验研究还包含两种基于淡入,放大和运动效果的复合外观样式。此外,我们探讨了在面对实验内容的过渡变化时,是否可以利用在弹出式实验设置中获得的知识来增强基于EEG的意图解码性能。主要结果。结果证实了我们最初的假设,即视觉内容的动态性可能会增加主动搜索中与固定开始有关的认知相关脑电活动的时间不确定性。这种时间上的不确定性挑战了无论视觉效果如何都保持解码性能恒定的关键目标。重要的是,所提出的基于不同实验设置之间的知识转移的EEG解码方法具有令人鼓舞的性能。意义。我们的研究表明,在主动搜索任务中,视觉场景的非平稳性是认知过程演变以及眼部行为动态(即停留时间和注视持续时间)的重要因素。此外,在这种不利情况下,我们改善单次试验检测性能的方法是使人机交互技术可用于人机交互应用的重要一步。

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