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Can Computers Learn From Humans to See Better? Inferring Scene Semantics From Viewers' Eye Movements

机译:电脑可以向人学习以更好看吗?从观看者的眼动推断场景语义

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This paper describes an attempt to bridge the semantic gap between computer vision and scene understanding employing eye movements. Even as computer vision algorithms can efficiently detect scene objects, discovering semantic relationships between these objects is as essential for scene understanding. Humans understand complex scenes by rapidly moving their eyes (saccades) to selectively focus on salient entities (fixations). For 110 social scenes, we compared verbal descriptions provided by observers against eye movements recorded during a free-viewing task. Data analysis confirms (ⅰ) a strong correlation between task-explicit linguistic descriptions and task-implicit eye movements, both of which are influenced by underlying scene semantics and (ⅱ) the ability of eye movements in the form of fixations and saccades to indicate salient entities and entity relationships mentioned in scene descriptions. We demonstrate how eye movements are useful for inferring the meaning of social (everyday scenes depicting human activities) and affective (emotion-evoking content like expressive faces, nudes) scenes. While saliency has always been studied through the prism of fixations, we show that saccades are particularly useful for (ⅰ) distinguishing mild and high-intensity facial expressions and (ⅱ) discovering interactive actions between scene entities.
机译:本文介绍了一种尝试通过眼睛移动来弥合计算机视觉和场景理解之间的语义鸿沟的尝试。即使计算机视觉算法可以有效地检测场景对象,发现这些对象之间的语义关系对于场景理解也同样重要。人类通过快速移动眼睛(扫视)以选择性地关注显着实体(注视)来理解复杂的场景。对于110个社交场景,我们将观察者提供的口头描述与自由观看任务期间记录的眼球运动进行了比较。数据分析证实(ⅰ)任务明确的语言描述与任务隐式眼动之间有很强的相关性,两者均受底层场景语义的影响,并且(ⅱ)眼动以注视和扫视形式表示突出的能力场景描述中提到的实体和实体关系。我们演示了眼动如何有助于推断社交(描述人类活动的日常场景)和情感(表达面部,裸体等情感内容)场景的含义。尽管一直通过注视棱镜研究显着性,但我们显示,扫视对于(ⅰ)区分轻度和高强度面部表情以及(ⅱ)发现场景实体之间的交互作用特别有用。

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