Spatiotemporal saliency based on location prior model

Liuyi Hu, Zhongyuan Wang, Mang Ye, Jing Xiao, R. Hu
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引用次数: 1

Abstract

Saliency detection for images and videos becomes increasingly popular due to its wide applicability. Enormous research efforts have been focused on saliency detection, but it still has some issues in maintaining spatiotemporal consistency of videos and uniformly highlighting entire objects. To address these issues, this paper proposes a superpixel-level spatiotemporal saliency model for saliency detection in videos. To detect salient object, we extract multiple spatiotemporal features combined with intra-consistency motion information preliminarily. Meanwhile, considering inter-consistency of foreground in videos, a set of foreground locations are obtained from previous frames. Then, we introduce foreground-background and local foreground contrast saliency cues of those features using the location prior information of foreground. These two improved contrast saliency cues uniformly highlight the entire object and suppress the background effectively. Finally, we use an interactively dynamic fusion method to integrate the output spatial and temporal saliency maps. The proposed approach is validated on challenging sets of video sequences. Subjective observations and objective evaluations demonstrate that the proposed model achieves a better performance on saliency detection compared with the state-of-the-art spatiotemporal saliency methods.
基于位置先验模型的时空显著性研究
图像和视频的显著性检测由于其广泛的适用性而越来越受欢迎。在显著性检测方面已经有了大量的研究成果,但在保持视频的时空一致性和均匀突出显示整个物体方面还存在一些问题。为了解决这些问题,本文提出了一种用于视频显著性检测的超像素级时空显著性模型。为了检测显著目标,我们初步提取了多个时空特征并结合一致性内运动信息。同时,考虑到视频中前景的相互一致性,从之前的帧中得到一组前景位置。然后,利用前景的位置先验信息引入前景-背景和局部前景对比显著性线索。这两种改进的对比度显著性线索均匀地突出了整个物体,有效地抑制了背景。最后,采用交互式动态融合方法对输出的时空显著性图进行融合。该方法在具有挑战性的视频序列集上得到了验证。主观观察和客观评价表明,与现有的时空显著性方法相比,该模型具有更好的显著性检测性能。
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