Author:
Liang Shuyi,Guo Yaning,Cheng Sizhe,Wu Shengjun,Wang Xiuchao,Wang Xinlu,Lu Diyan,Liu Xufeng
Abstract
(1) Background: Attention is an important cognitive process in daily life. However, limited cognitive resources have been allocated to attention, especially for multiple objects and its mechanism is still unclear. Most of the previous studies have been based on the static attention paradigms with relatively lower ecological validity. Thus, we aimed to explore the attention processing mechanism in a multiple object tracking (MOT) task by using a dynamic attention paradigm. Two experiments were conducted to assess whether there was a multi-focus attention processing model, and whether the processing model changes with the number of target balls. (2) Methods: During the experiments, 33 university students completed MOT combined with the simultaneous–sequential paradigm, with tracking accuracy and reaction time of correct reaction as indicators. (3) Results: (i) When there were two target balls, an obvious bilateral field advantage was apparent. (ii) When there were four target balls, participants’ performance was significantly better when stimuli were presented simultaneously than when they were presented sequentially, showing a multi-focus attention processing model. (4) Conclusion: Attention processing is characterized by flexibility, providing strong evidence to support the multi-focus theory.
Funder
Natural Science Foundation of Shaanxi Province
Key project of PLA Logistics Research Program
Reference46 articles.
1. Peng, D.L. (2019). General Psychology, Beijing Normal University Press. [5th ed.].
2. Visual attention: The past 25 years;Carrasco;Vision Res.,2011
3. Cortical mechanisms of space-based and object-based attentional control;Yantis;Curr. Opin. Neurobiol.,2003
4. Neural coding of behavioral relevance in parietal cortex;Assad;Curr. Opin. Neurobiol.,2003
5. Diab, M.S., Elhosseini, M.A., El-Sayed, M.S., and Ali, H.A. (2021). Brain Strategy Algorithm for Multiple Object Tracking Based on Merging Semantic Attributes and Appearance Features. Sensors, 21.