Increasing Video Saliency Model Generalizability by Training for Smooth Pursuit Prediction

Mikhail Startsev, M. Dorr
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引用次数: 5

Abstract

Saliency prediction even for videos is traditionally associated with fixation prediction. Unlike images, however, videos also induce smooth pursuit eye movements, for example when a salient object is moving and is tracked across the video surface. Nevertheless, current saliency data sets and models mostly ignore pursuit, either by combining it with fixations, or discarding the respective samples. In this work, we utilize a state-of-the-art smooth pursuit detector and a Slicing Convolutional Neural Network (S-CNN) to train two saliency models, one targeting fixation prediction and the other targeting smooth pursuit. We hypothesize that pursuit-salient video parts would generalize better, since the motion patterns should be relatively similar across data sets. To test this, we consider an independent video saliency data set, where no pursuit-fixation differentiation is performed. In our experiments, the pursuit-targeting model outperforms several state-of-the-art saliency algorithms on both the test part of our main data set and the additionally considered data set.
通过训练提高视频显著性模型的泛化性,用于平滑追踪预测
即使是视频的显著性预测传统上也与固定预测有关。然而,与图像不同的是,视频也会引起眼球的平滑追踪运动,例如当一个显著的物体在移动时,它会在视频表面上被跟踪。然而,目前的显著性数据集和模型大多忽略了追求,要么将其与注视结合起来,要么丢弃各自的样本。在这项工作中,我们利用最先进的平滑追踪检测器和切片卷积神经网络(S-CNN)来训练两个显著性模型,一个是针对注视预测,另一个是针对平滑追踪。我们假设追求突出的视频部分可以更好地泛化,因为运动模式应该在数据集之间相对相似。为了验证这一点,我们考虑了一个独立的视频显著性数据集,其中没有执行追求-注视区分。在我们的实验中,在主要数据集的测试部分和额外考虑的数据集上,追踪目标模型都优于几种最先进的显著性算法。
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