Tal MakovskiGustavo A. VázquezYuhong Jiang
These findings suggest that a demanding task of tracking multiple objects can benefit from learning of repeated motion trajectories. Such learning potentially facilitates tracking in natural vision, although learning is largely confined to the trajectories of attended objects. Furthermore, we showed that learning in attentive tracking relies on relational coding of all target trajectories. Surprisingly, learning was not specific to the trained temporal context, probably because observers have learned motion paths of each trajectory independently of the exact temporal order.
Yuhong JiangGustavo A. VázquezTal Makovski
Aiping WangZhi‐Quan ChengRalph R. MartinSikun Li
Marjan AbdechiriKarim FaezHamidreza Amindavar
Kaining HuangYan ShiFuqi ZhaoZijun ZhangShanshan Tu