University of Illinois, 603 E. Daniel St., Champaign, IL, 61820, USA.
Sci Rep. 2021 Mar 17;11(1):6170. doi: 10.1038/s41598-021-85605-8.
Objects differ from one another along a multitude of visual features. The more distinct an object is from other objects in its surroundings, the easier it is to find it. However, it is still unknown how this distinctiveness advantage emerges in human vision. Here, we studied how visual distinctiveness signals along two feature dimensions-shape and surface texture-combine to determine the overall distinctiveness of an object in the scene. Distinctiveness scores between a target object and distractors were measured separately for shape and texture using a search task. These scores were then used to predict search times when a target differed from distractors along both shape and texture. Model comparison showed that the overall object distinctiveness was best predicted when shape and texture combined using a Euclidian metric, confirming the brain is computing independent distinctiveness scores for shape and texture and combining them to direct attention.
物体在众多视觉特征上彼此不同。一个物体与周围其他物体的区别越大,就越容易找到它。然而,目前尚不清楚这种独特性优势是如何在人类视觉中出现的。在这里,我们研究了场景中两个特征维度——形状和表面纹理——的视觉独特性信号如何结合起来确定物体的整体独特性。使用搜索任务分别测量目标物体和干扰项之间的形状和纹理的独特性得分。然后,这些分数被用来预测当目标与形状和纹理的干扰项不同时的搜索时间。模型比较表明,当使用欧几里得度量法结合形状和纹理时,整体物体独特性的预测效果最佳,这证实了大脑正在为形状和纹理计算独立的独特性分数,并将它们结合起来引导注意力。