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Do we look at lights? Using mixture modelling to distinguish between low- and high-level factors in natural image viewing

机译:我们看灯吗?使用混合建模来区分自然图像查看中的低级和高级因素

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The allocation of overt visual attention while viewing photographs of natural scenes is commonly thought to involve both bottom-up feature cues, such as luminance contrast, and top-down factors such as behavioural relevance and scene understanding. Profiting from the fact that light sources are highly visible but uninformative in visual scenes, we develop a mixture model approach that estimates the relative contribution of various low and high-level factors to patterns of eye movements whilst viewing natural scenes containing light sources. Low-level salience accounts predicted fixations at luminance contrast and at lights, whereas these factors played only a minor role in the observed human fixations. Conversely, human data were mostly explicable in terms of a central bias and a foreground preference. Moreover, observers were more likely to look near lights rather than directly at them, an effect that cannot be explained by low-level stimulus factors such as luminance or contrast. These and other results support the idea that the visual system neglects highly visible cues in favour of less visible object information. Mixture modelling might be a good way forward in understanding visual scene exploration, since it makes it possible to measure the extent that low-level or high-level cues act as drivers of eye movements.
机译:人们通常认为,在查看自然场景的照片时,视觉注意力的分配涉及自下而上的特征提示(例如亮度对比)和自上而下的因素(例如行为相关性和场景理解)。得益于光源在视觉场景中高度可见但信息量不足的事实,我们开发了一种混合模型方法,可在查看包含光源的自然场景时估算各种低层和高层因素对眼睛运动模式的相对贡献。低水平的显着性说明了在亮度对比度和光线下的预测注视,而这些因素在观察到的人类注视中仅起次要作用。相反,就中央偏见和前景偏好而言,人类数据大多是可解释的。而且,观察者更有可能靠近灯,而不是直接朝着灯看,这种效果无法用低水平的刺激因素(例如亮度或对比度)来解释。这些结果和其他结果支持这样的想法,即视觉系统忽略了高度可见的提示,而倾向于较少可见的对象信息。混合建模可能是理解视觉场景探索的一种很好的方法,因为它可以测量低级或高级提示作为眼睛运动驱动力的程度。

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