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Prediction of the Inter-Observer Visual Congruency (IOVC) and Application to Image Ranking

机译:预测观察者间视觉同时(IOVC)和应用于图像排名的应用

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This paper proposes an automatic method for predicting the inter-observer visual congruency (IOVC). The IOVC reflects the congruence or the variability among different subjects looking at the same image. Predicting this congruence is of interest for image processing applications where the visual perception of a picture matters such as website design, advertisement, etc. This paper makes several new contributions. First, a computational model of the IOVC is proposed. This new model is a mixture of low-level visual features extracted from the input picture where model's parameters are learned by using a large eye-tracking database. Once the parameters have been learned, it can be used for any new picture. Second, regarding low-level visual feature extraction, we propose a new scheme to compute the depth of field of a picture. Finally, once the training and the feature extraction have been carried out, a score ranging from 0 (minimal congruency) to 1 (maximal congruency) is computed. A value of 1 indicates that observers would focus on the same locations and suggests that the picture presents strong locations of interest. A second database of eye movements is used to assess the performance of the proposed model. Results show that our IOVC criterion outperforms the Feature Congestion measure [33]. To illustrate the interest of the proposed model, we have used it to automatically rank personalized photograph.
机译:本文提出了一种预测观察者间视觉一致性(IOVC)的自动方法。该IOVC体现了一致性或不同科目看同一图像中的变异性。这个预测是一致性对于图像处理应用的兴趣,其中一个画面的视觉感知问题,如网站设计,广告等。本文提出了一些新的贡献。首先,IOVC的计算模型。这种新的模型是从输入图像提取的低级视觉特征,其中模型的参数通过使用大眼睛跟踪数据库学到的混合物。一旦参数已经被学习,它可以用于任何新的图片。其次,对于低级别的视觉特征提取,我们提出了一个新的方案来计算画面的景深。最后,一旦训练和特征提取已经进行了,范围从0(最小一致性)的得分为1(最大一致性)被计算。的值为1表示,观察员将重点放在相同的位置,并建议作为感兴趣画面呈现强的位置。眼球运动的第二数据库被用于评估所提出的模型的性能。结果表明,我们IOVC标准优于功能拥塞量度[33]。为了说明该模型的利益,我们把它用于自动排名个性化的照片。

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