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Exploiting inter-image similarity and ensemble of extreme learners for fixation prediction using deep features

机译:利用深度学习者的极端学习者的图像间相似性和合奏性进行注视预测

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This paper presents a novel fixation prediction and saliency modeling framework based on inter-image similarities and ensemble of Extreme Learning Machines (ELM). The proposed framework is inspired by two observations, (1) the contextual information of a scene along with low-level visual cues modulates attention, (2) the influence of scene memorability on eye movement patterns caused by the resemblance of a scene to a former visual experience. Motivated by such observations, we develop a framework that estimates the saliency of a given image using an ensemble of extreme learners, each trained on an image similar to the input image. That is, after retrieving a set of similar images for a given image, a saliency predictor is learnt from each of the images in the retrieved image set using an ELM, resulting in an ensemble. The saliency of the given image is then measured in terms of the mean of predicted saliency value by the ensemble's members. (C) 2017 Elsevier B.V. All rights reserved.
机译:本文提出了一种基于图像间相似度和极限学习机(ELM)集成的新颖注视预测和显着性建模框架。所提出的框架受到两个观察结果的启发:(1)场景的上下文信息以及低级视觉提示可调节注意力;(2)场景记忆性对场景与前者的相似性造成的眼动模式的影响视觉体验。基于这样的观察,我们开发了一个框架,该框架使用一组极端学习者来估计给定图像的显着性,每个学习者都在与输入图像相似的图像上进行训练。即,在针对给定图像检索了一组相似图像之后,使用ELM从检索到的图像集中的每个图像中学习显着性预测因子,从而产生整体。然后根据集合成员的预测显着性值的平均值来测量给定图像的显着性。 (C)2017 Elsevier B.V.保留所有权利。

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