从椅子到大脑:定制手术活动定位的光流

Markus Philipp, Neal Bacher, Stefan Saur, Franziska Mathis-Ullrich, Andrés Bruhn
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引用次数: 0

摘要

最近的手术活动定位方法依赖于光流(OF)产生的运动特征。然而,尽管他们在计算OF时考虑了最先进的cnn,但他们通常求助于预训练的实现,这些实现是不知道域的。我们通过两种方式解决了这个问题:(i)使用最近的定位方法的预训练的of - cnn,我们分析了视频属性(如反射、运动和模糊)对神经外科数据of质量的影响。(ii)基于此分析,我们设计了一个专门定制的合成训练数据集,该数据集允许我们为手术活动定位定制预训练的OF-CNN。我们的评估清楚地显示了这种定制方法的好处。它不仅提高了of本身的精度,更重要的是,也提高了实际定位任务的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From Chairs To Brains: Customizing Optical Flow For Surgical Activity Localization
Recent approaches for surgical activity localization rely on motion features derived from the optical flow (OF). However, although they consider state-of-the-art CNNs when computing the OF, they typically resort to pre-trained implementations which are domain-unaware. We address this problem in two ways: (i) Using the pre-trained OF-CNN of recent localization approach, we analyze the impact of video properties such as reflections, motion and blur on the quality of the OF from neurosurgical data. (ii) Based on this analysis, we design a specifically tailored synthetic training dataset which allows us to customize the pre-trained OF-CNN for surgical activity localization. Our evaluation clearly shows the benefit of this customization approach. It not only leads to an improved accuracy of the OF itself but, even more importantly, also to an improved performance for the actual localization task.
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