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Motion-Guided Cascaded Refinement Network for Video Object Segmentation

机译:运动引导级联细化网络的视频对象分割

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Deep CNNs have achieved superior performance in many tasks of computer vision and image understanding. However, it is still difficult to effectively apply deep CNNs to video object segmentation(VOS) since treating video frames as separate and static will lose the information hidden in motion. To tackle this problem, we propose a Motion-guided Cascaded Refinement Network for VOS. By assuming the object motion is normally different from the background motion, for a video frame we first apply an active contour model on optical flow to coarsely segment objects of interest. Then, the proposed Cascaded Refinement Network(CRN) takes the coarse segmentation as guidance to generate an accurate segmentation of full resolution. In this way, the motion information and the deep CNNs can well complement each other to accurately segment objects from video frames. Furthermore, in CRN we introduce a Single-channel Residual Attention Module to incorporate the coarse segmentation map as attention, making our network effective and efficient in both training and testing. We perform experiments on the popular benchmarks and the results show that our method achieves state-of-the-art performance at a much faster speed.
机译:深度CNN在许多计算机视觉和图像理解任务中均取得了卓越的性能。但是,仍然难以有效地将深CNN应用于视频对象分割(VOS),因为将视频帧视为单独的静态对象会丢失运动中隐藏的信息。为了解决此问题,我们提出了一种针对VOS的运动引导级联细化网络。通过假设物体运动通常与背景运动不同,对于视频帧,我们首先在光流上应用活动轮廓模型以粗略分割感兴趣的物体。然后,提出的级联细化网络(CRN)以粗略分割为指导,以生成完整分辨率的准确分割。这样,运动信息和深层CNN可以很好地相互补充,以准确地从视频帧中分割出对象。此外,在CRN中,我们引入了单通道残差注意模块,以将粗略的分割图作为注意事项,从而使我们的网络在培训和测试中均有效且高效。我们在流行的基准上进行了实验,结果表明我们的方法以更快的速度实现了最新的性能。

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