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Video saliency detection based on robust seeds generation and spatio-temporal propagation

机译:基于鲁棒种子生成和时空传播的视频显着性检测

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This paper proposes a novel video saliency detection method for unconstrained videos with various motion patterns and complex scenes. We fuse multiple tempo-scale optical flow with discarding rule to enhance the reliability of motion information. Based on efficiently computation of motion distinction, our algorithm is able to locate the foreground and background approximately. Considering the mutuality of video frames, we regard video saliency seeds generation as the pattern mining process. With the help of robust saliency seeds, spatio-temporal propagation is performed in both intra-frame and inter-frame graphs. This provides an effective way to refine saliency maps. Quantitative and qualitative experiments are carried out on two benchmark video datasets, which show that our approach achieves state-of-the-art performance in video saliency detection.
机译:本文提出了一种新颖的视频显着性检测方法,具有各种运动模式和复杂场景的无约束视频。我们熔断多个速度缩放光流,丢弃规则,以提高运动信息的可靠性。基于有效地计算运动区别,我们的算法能够大致定位前景和背景。考虑到视频帧的相互性,我们认为视频显着种子作为模式挖掘过程。借助强劲的显着性,在帧内帧内和帧间图中进行时空传播。这提供了一种改进显着性图的有效方法。在两个基准视频数据集中进行定量和定性实验,表明我们的方法在视频显着检测中实现了最先进的性能。

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