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Motion-Aware Rapid Video Saliency Detection

机译:运动感知快速视频显着性检测

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摘要

In this paper, we propose a computationally efficient and consistently accurate spatiotemporal salient object detection method to identify the most noticeable object in a video sequence. Intuitively, the underlying motion in a video is a more stable saliency indicator than the apparent color cues that often contain significant variations and complex structures. Based on this observation, we build an efficient and accurate spatiotemporal saliency detection method that uses motion information as a leverage to locate the most dynamic regions in a video sequence. We first analyze the optical flow field to obtain foreground priors, and then incorporate spatial saliency features such as appearance contrasts and compactness measures, into a multi-cue integration framework to combine various saliency cues and achieve temporal consistency. Rigorous experiments on the challenging SegTrackV1, SegTrackV2, and FBMS datasets demonstrate that our method generates comparable or superior performance to state-of-the-art methods while running almost 100x faster at only 0.08 sec/frame. Promising performance and rapid speed imply that the proposed spatiotemporal saliency method can be easily involved in various vision applications.
机译:在本文中,我们提出了一种计算上有效且始终如一的准确的时空突出物体检测方法,以识别视频序列中最明显的对象。直观地,视频中的基本运动是比通常包含显着变化和复杂结构的表观颜色提示更稳定的显着指示。基于该观察,我们构建了一种高效且准确的时空显着性检测方法,使用运动信息作为在视频序列中定位最动态区域的杠杆。我们首先分析光学流场以获得前景前沿,然后将诸如外观对比度和紧凑性措施的空间显着性,进入多个提示集成框架,以组合各种显着性提示并实现时间一致性。对挑战SEGTRACKV1,SEGTRACKV2和FBMS数据集的严格实验表明,我们的方法对最先进的方法产生了可比或卓越的性能,同时仅在0.08秒/框架上更快地运行近100倍。有前途的性能和快速速度意味着所提出的时空显着性方法可以很容易地参与各种视觉应用。

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