3D-Aware Ellipse Prediction for Object-Based Camera Pose Estimation

Matthieu Zins, Gilles Simon, M. Berger
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引用次数: 7

Abstract

In this paper, we propose a method for coarse camera pose computation which is robust to viewing conditions and does not require a detailed model of the scene. This method meets the growing need of easy deployment of robotics or augmented reality applications in any environments, especially those for which no accurate 3D model nor huge amount of ground truth data are available. It exploits the ability of deep learning techniques to reliably detect objects regardless of viewing conditions. Previous works have also shown that abstracting the geometry of a scene of objects by an ellipsoid cloud allows to compute the camera pose accurately enough for various application needs. Though promising, these approaches use the ellipses fitted to the detection bounding boxes as an approximation of the imaged objects. In this paper, we go one step further and propose a learning-based method which detects improved elliptic approximations of objects which are coherent with the 3D ellipsoid in terms of perspective projection. Experiments prove that the accuracy of the computed pose significantly increases thanks to our method and is more robust to the variability of the boundaries of the detection boxes. This is achieved with very little effort in terms of training data acquisition – a few hundred calibrated images of which only three need manual object annotation.
基于物体的相机姿态估计的3d感知椭圆预测
在本文中,我们提出了一种粗糙相机姿态计算方法,该方法对观看条件具有鲁棒性,并且不需要详细的场景模型。该方法满足了在任何环境中轻松部署机器人或增强现实应用的日益增长的需求,特别是那些没有精确的3D模型或大量地面真实数据的环境。它利用深度学习技术的能力,在任何观看条件下都能可靠地检测物体。以前的工作也表明,通过椭球云抽象物体场景的几何形状,可以精确地计算相机姿态,以满足各种应用需求。虽然这些方法很有前途,但它们使用拟合到检测边界框的椭圆作为图像对象的近似值。在本文中,我们更进一步,提出了一种基于学习的方法,从透视投影的角度检测与三维椭球体相关的物体的改进椭圆近似。实验证明,该方法大大提高了姿态计算的精度,并且对检测框边界的可变性具有更强的鲁棒性。这在训练数据获取方面非常容易实现-几百个校准图像中只有三个需要手动对象注释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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