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DronePose: Photorealistic UAV-Assistant Dataset Synthesis for 3D Pose Estimation via a Smooth Silhouette Loss

机译:无驱动:通过平滑的轮廓丢失,光电化无人助理数据集3D姿势估计的合成

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In this work we consider UAVs as cooperative agents supporting human users in their operations. In this context, the 3D localisation of the UAV assistant is an important task that can facilitate the exchange of spatial information between the user and the UAV. To address this in a data-driven manner, we design a data synthesis pipeline to create a realistic multimodal dataset that includes both the exocentric user view, and the egocentric UAV view. We then exploit the joint availability of photorealistic and synthesized inputs to train a single-shot monocular pose estimation model. During training we leverage differentiable rendering to supplement a state-of-the-art direct regression objective with a novel smooth silhouette loss. Our results demonstrate its qualitative and quantitative performance gains over traditional silhouette objectives.
机译:在这项工作中,我们将无人机视为支持人类业务的合作代理商。 在这种情况下,UAV助手的3D定位是可以促进用户与UAV之间的空间信息交换的重要任务。 要以数据驱动方式解决此问题,我们设计数据综合管线以创建一个逼真的多模式数据集,包括外传用户视图和EGoCentric UV视图。 然后,我们利用了光电态化和合成输入的联合可用性,以培训单目一体姿势估计模型。 在培训期间,我们利用可微弱的渲染来补充最先进的直接回归目标,并具有新颖的平滑轮廓损失。 我们的结果展示了传统剪影目标的定性和定量性能。

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