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Unsupervised video co-segmentation based on superpixel co-saliency and region merging

机译:基于超像素共凸度和区域合并的无监督视频共分割

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Nowadays, fully unsupervised video object segmentation is still a challenge in computer vision. Furthermore, it is more difficult to segment the object from a set of clips. In this paper, we propose an unsupervised and on-line method that efficiently segments common objects from a set of video clips. Our approach is based on the hypothesis, that common or similar objects in multiple video clips are salient, and they share similar features. At first, we try to find out the regions in every clip which are salient and share similar features by proposing a new co-saliency scheme based on superpixels. Then, the most salient superpixels are chosen as the initial object marker superpixels. Starting from these superpixels, we merge neighboring and similar regions, and segment out the final object parts. The experimental results demonstrate that the proposed method can efficiently segment the common objects from a group of video clips with generally lower error rate than some state-of-the-art video co-segmentation methods.
机译:如今,在计算机视觉中,完全无监督的视频对象分割仍然是一个挑战。此外,从一组剪辑中分割对象更加困难。在本文中,我们提出了一种无监督的在线方法,该方法可以有效地从一组视频剪辑中分割出公共对象。我们的方法基于以下假设:多个视频剪辑中的共同或相似对象是显着的,并且它们具有相似的功能。首先,我们尝试通过提出一种基于超像素的新的显着性方案,找出每个片段中显着且具有相似特征的区域。然后,选择最显着的超像素作为初始物体标记超像素。从这些超像素开始,我们合并相邻和相似的区域,并分割出最终的对象部分。实验结果表明,与某些最新的视频共分割方法相比,该方法可以有效地从一组视频剪辑中分割出公共对象,且误码率通常较低。

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