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首页> 外文期刊>Attention, perception & psychophysics >Center bias outperforms image salience but not semantics in accounting for attention during scene viewing
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Center bias outperforms image salience but not semantics in accounting for attention during scene viewing

机译:中心偏见优于图像突出性,但在场景观察期间,没有语义

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摘要

How do we determine where to focus our attention in real-world scenes? Image saliency theory proposes that our attention is 'pulled' to scene regions that differ in low-level image features. However, models that formalize image saliency theory often contain significant scene-independent spatial biases. In the present studies, three different viewing tasks were used to evaluate whether image saliency models account for variance in scene fixation density based primarily on scene-dependent, low-level feature contrast, or on their scene-independent spatial biases. For comparison, fixation density was also compared to semantic feature maps (Meaning Maps; Henderson & Hayes,Nature Human Behaviour, 1, 743-747,2017) that were generated using human ratings of isolated scene patches. The squared correlations (R-2) between scene fixation density and each image saliency model's center bias, each full image saliency model, and meaning maps were computed. The results showed that in tasks that produced observer center bias, the image saliency models on average explained 23% less variance in scene fixation density than their center biases alone. In comparison, meaning maps explained on average 10% more variance than center bias alone. We conclude that image saliency theory generalizes poorly to real-world scenes.
机译:我们如何确定在现实世界场景中关注我们的关注?图像显着理论提出我们的注意力是“拉扯”的场景区域,这些区域在低级别的图像特征中不同。然而,正式化图像显着理论的模型通常包含显着的场景独立的空间偏差。在本研究中,使用三个不同的观看任务来评估图像显着模型是否占场景固定密度的方差,主要基于现场依赖性的低级特征对比度,或者在其场景的空间偏差上。为了比较,还将固定密度与语义特征图进行比较(意味着地图;亨德森&海耶斯,自然人类行为,1,743-747,2017),使用人为孤立的场景斑块产生。场景固定密度和每个图像显着模型的中心偏置之间的平方相关(R-2),每个全部图像显着模型和意义映射都是计算的。结果表明,在产生观察者中心偏置的任务中,图像显着模型平均解释了场景固定密度的方差比单独的中心偏差减少23%。相比之下,意义图平均解释了比单独的中心偏压更多的差异。我们得出结论,图像显着理论概括到现实世界的场景不佳。

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