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gDLS*: Generalized Pose-and-Scale Estimation Given Scale and Gravity Priors

机译:gDLS *:给定尺度和重力先验的广义姿势和尺度估计

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Many real-world applications in augmented reality (AR), 3D mapping, and robotics require both fast and accurate estimation of camera poses and scales from multiple images captured by multiple cameras or a single moving camera. Achieving high speed and maintaining high accuracy in a pose-and-scale estimator are often conflicting goals. To simultaneously achieve both, we exploit a priori knowledge about the solution space. We present gDLS*, a generalized-camera-model pose-and-scale estimator that utilizes rotation and scale priors. gDLS* allows an application to flexibly weigh the contribution of each prior, which is important since priors often come from noisy sensors. Compared to state-of-the-art generalized-pose-and-scale estimators (e.g., gDLS), our experiments on both synthetic and real data consistently demonstrate that gDLS* accelerates the estimation process and improves scale and pose accuracy.
机译:增强现实(AR),3D映射和机器人技术中的许多实际应用程序都需要从多个摄像机或单个移动摄像机捕获的多个图像中快速准确地估计摄像机的姿势和比例。在姿势和比例估计器中实现高速并保持高精度常常是相互矛盾的目标。为了同时实现这两者,我们利用了有关解决方案空间的先验知识。我们介绍gDLS *,这是一种利用旋转和比例先验的广义相机模型姿态和比例估计器。 gDLS *允许应用程序灵活地权衡每个先验的贡献,这很重要,因为先验通常来自嘈杂的传感器。与最先进的广义姿态和比例估计器(例如gDLS)相比,我们在合成数据和真实数据上的实验一致证明gDLS *加快了估计过程,并提高了比例和姿态精度。

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