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Predicting When Saliency Maps are Accurate and Eye Fixations Consistent

机译:预测显着性图准确且眼球注视一致的时间

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Many computational models of visual attention use image features and machine learning techniques to predict eye fixation locations as saliency maps. Recently, the success of Deep Convolutional Neural Networks (DCNNs) for object recognition has opened a new avenue for computational models of visual attention due to the tight link between visual attention and object recognition. In this paper, we show that using features from DCNNs for object recognition we can make predictions that enrich the information provided by saliency models. Namely, we can estimate the reliability of a saliency model from the raw image, which serves as a meta-saliency measure that may be used to select the best saliency algorithm for an image. Analogously, the consistency of the eye fixations among subjects, i.e. the agreement between the eye fixation locations of different subjects, can also be predicted and used by a designer to assess whether subjects reach a consensus about salient image locations.
机译:视觉注意力的许多计算模型都使用图像特征和机器学习技术来将眼球注视位置预测为显着图。最近,由于视觉注意力和物体识别之间的紧密联系,用于对象识别的深度卷积神经网络(DCNN)的成功开辟了视觉注意力计算模型的新途径。在本文中,我们证明了使用DCNN的特征进行对象识别,我们可以进行预测,以丰富显着性模型提供的信息。即,我们可以从原始图像估计显着性模型的可靠性,该显着性模型用作可用于为图像选择最佳显着性算法的元显着性度量。类似地,设计者还可以预测受试者之间的眼睛注视的一致性,即不同受试者的眼睛注视位置之间的一致性,并由设计者用来评估受试者是否就显着图像位置达成共识。

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