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DARWIN: Deformable Patient Avatar Representation With Deep Image Network

机译:DARWIN:具有深度图像网络的可变形患者头像表示

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In this paper, we present a technical approach to robustly estimate the detailed patient body surface mesh under clothing cover from a single snapshot of a range sensor. Existing methods either lack level of detail of the estimated patient body model, fail to estimate the body model robustly under clothing cover, or lack sufficient evaluation over real patient datasets. In this work, we overcome these limitations by learning deep convolutional networks over real clinical dataset with large variation and augmentation. Our approach is validated with experiments conducted over 1063 human subjects from 3 different hospitals and surface errors are measured against groundtruth from CT data.
机译:在本文中,我们提出了一种技术方法,可以从距离传感器的单个快照中可靠地估计衣物覆盖下的详细患者身体表面网格。现有方法或者缺乏估计的患者身体模型的细节水平,不能在衣服覆盖物下稳健地估计身体模型,或者缺乏对真实患者数据集的充分评估。在这项工作中,我们通过在具有较大变化和增强的真实临床数据集上学习深度卷积网络来克服这些限制。我们的方法已通过对3家不同医院的1063名人类受试者进行的实验进行了验证,并且根据CT数据根据地面真实性对表面误差进行了测量。

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