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Incorporating Temporal Prior from Motion Flow for Instrument Segmentation in Minimally Invasive Surgery Video

机译:将运动流中的时间先验合并到微创手术视频中进行器械分割

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Automatic instrument segmentation in video is an essentially fundamental yet challenging problem for robot-assisted minimally invasive surgery. In this paper, we propose a novel framework to leverage instrument motion information, by incorporating a derived temporal prior to an attention pyramid network for accurate segmentation. Our inferred prior can provide reliable indication of the instrument location and shape, which is propagated from the previous frame to the current frame according to inter-frame motion flow. This prior is injected to the middle of an encoder-decoder segmentation network as an initialization of a pyramid of attention modules, to explicitly guide segmentation output from coarse to fine. In this way, the temporal dynamics and the attention network can effectively complement and benefit each other. As additional usage, our temporal prior enables semi-supervised learning with periodically unlabeled video frames, simply by reverse execution. We extensively validate our method on the public 2017 MICCAI EndoVis Robotic Instrument Segmentation Challenge dataset with three different tasks. Our method consistently exceeds the state-of-the-art results across all three tasks by a large margin. Our semi-supervised variant also demonstrates a promising potential for reducing annotation cost in the clinical practice.
机译:对于机器人辅助的微创手术,视频中的自动仪器分割是一个基本但具有挑战性的问题。在本文中,我们提出了一种新颖的框架,通过在注意力金字塔网络之前合并派生的时间以进行准确的分割,从而利用仪器的运动信息。我们推论出的先验可以可靠地指示仪器的位置和形状,并根据帧间运动流将其从前一帧传播到当前帧。该先验被注入到编码器/解码器分割网络的中间,作为注意模块金字塔的初始化,以明确指导分割输出从粗到细。这样,时间动态和注意力网络可以有效地相互补充和受益。作为额外的用法,我们的时间优先级可以通过反向执行简单地使用周期性未标记的视频帧进行半监督学习。我们在具有三个不同任务的公开的2017 MICCAI EndoVis机器人仪器细分挑战数据集中广泛验证了我们的方法。我们的方法在所有三个任务上始终都超过了最新技术成果。我们的半监督变体还展示了在临床实践中降低注解成本的潜在潜力。

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