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Spatiotemporal Bundle Adjustment for Dynamic 3D Reconstruction

机译:时空捆绑调整以实现动态3D重建

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Bundle adjustment jointly optimizes camera intrinsics and extrinsics and 3D point triangulation to reconstruct a static scene. The triangulation constraint however is invalid for moving points captured in multiple unsynchronized videos and bundle adjustment is not purposed to estimate the temporal alignment between cameras. In this paper, we present a spatiotemporal bundle adjustment approach that jointly optimizes four coupled sub-problems: estimating camera intrinsics and extrinsics, triangulating 3D static points, as well as subframe temporal alignment between cameras and estimating 3D trajectories of dynamic points. Key to our joint optimization is the careful integration of physics-based motion priors within the reconstruction pipeline, validated on a large motion capture corpus. We present an end-to-end pipeline that takes multiple uncalibrated and unsynchronized video streams and produces a dynamic reconstruction of the event. Because the videos are aligned with sub-frame precision, we reconstruct 3D trajectories of unconstrained outdoor activities at much higher temporal resolution than the input videos.
机译:捆绑调整可共同优化相机的本征和外部特性,以及3D点三角剖分,以重建静态场景。但是,三角剖分约束对于在多个非同步视频中捕获的移动点无效,并且束调整无意于估计摄像机之间的时间对齐。在本文中,我们提出了一种时空束调整方法,该方法可共同优化四个耦合的子问题:估计相机本征和外部问题,对3D静态点进行三角剖分以及相机之间的子帧时间对齐以及估计动态点的3D轨迹。我们共同优化的关键是在重建管线中精心整合基于物理学的运动先验,并在大型运动捕获语料库上进行了验证。我们提出了一个端到端流水线,该流水线接收多个未校准和未同步的视频流,并生成事件的动态重构。由于视频以子帧精度对齐,因此我们以比输入视频高得多的时间分辨率重建不受约束的户外活动的3D轨迹。

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