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Video Object Discovery and Co-segmentation with Extremely Weak Supervision

机译:具有极弱监督的视频对象发现和共分段

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Video object co-segmentation refers to the problem of simultaneously segmenting a common category of objects from multiple videos. Most existing video co-segmentation methods assume that all frames from all videos contain the target objects. Unfortunately, this assumption is rarely true in practice, particularly for large video sets, and existing methods perform poorly when the assumption is violated. Hence, any practical video object co-segmentation algorithm needs to identify the relevant frames containing the target object from all videos, and then co-segment the object only from these relevant frames. We present a spatiotemporal energy minimization formulation for simultaneous video object discovery and co-segmentation across multiple videos. Our formulation incorporates a spatiotemporal auto-context model, which is combined with appearance modeling for superpixel labeling. The superpixel-level labels are propagated to the frame level through a multiple instance boosting algorithm with spatial reasoning (Spatial-MILBoosting), based on which frames containing the video object are identified. Our method only needs to be bootstrapped with the frame-level labels for a few video frames (e.g., usually 1 to 3) to indicate if they contain the target objects or not. Experiments on three datasets validate the efficacy of our proposed method, which compares favorably with the state-of-the-art.
机译:视频对象共同细分是指同时从多个视频中分割对象的公共类别的问题。大多数现有的视频共分割方法都假定所有视频中的所有帧都包含目标对象。不幸的是,这种假设在实践中很少是正确的,尤其是对于大型视频集,并且在违反该假设时,现有方法的效果会很差。因此,任何实际的视频对象共分割算法都需要从所有视频中识别出包含目标对象的相关帧,然后仅从这些相关帧中对对象进行共细分。我们提出了一个时空能量最小化公式,用于同时在多个视频中进行视频对象发现和共分段。我们的公式结合了时空自动上下文模型,该模型与用于超级像素标记的外观建模相结合。通过基于空间推理的多实例增强算法(Spatial-MILBoosting),将超像素级标签传播到帧级,根据该算法识别出包含视频对象的帧。我们的方法仅需使用几个视频帧(例如通常为1到3个)的帧级标签进行引导,以指示它们是否包含目标对象。在三个数据集上进行的实验验证了我们提出的方法的有效性,该方法与最新技术相比具有优势。

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