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Fast Video Saliency Detection based on Feature Competition

机译:基于特征竞争的快速视频显着性检测

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In this paper, we propose a light video saliency prediction model, named SalFCM, which achieves fixation detection rate of 110fps. It is known that the human attention is captured by objects that have always been present or newly appeared. To model this dynamic change, we propose an Inter-frame Feature Competition Module (IFCM) to make an adaptive choice between correlated and differential features of consecutive frames. Besides, it is noted that saliency is better explained by low-level rather than high-level features in some visual scenes. Hence, we design a Hierarchical Feature Competition Module (HFCM) to balance the influence of low-level and high-level features. Our model achieves a good trade-off between precision and processing speed. The developed SalFCM is evaluated on three video saliency datasets: DHF1K, Hollywood-2 and UCF-sports. We conduct ablation studies to verify the effectiveness of the proposed model.
机译:在本文中,我们提出了一个名为SALFCM的轻型视频显着性预测模型,实现了110fps的固定检测率。众所周知,人类注意力被始终存在或新出现的物体捕获。为了模拟这种动态变化,我们提出了一个帧内特征竞争模块(IFCM),以在连续帧的相关和差分特征之间进行自适应选择。此外,注意到,在一些视觉场景中,低级而不是高级功能更好地解释了显着性。因此,我们设计了分层特征竞争模块(HFCM),以平衡低级和高级功能的影响。我们的车型在精度和加工速度之间实现了良好的权衡。开发的SALFCM在三个视频显着数据集中评估:DHF1K,好莱坞-2和UCF-Sports。我们进行消融研究以验证所提出的模型的有效性。

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