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Resolving scale ambiguity for monocular visual odometry

机译:解决单眼视觉径测量的规模歧义

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Scale ambiguity is an inherent problem in monocular visual odometry and SLAM. Our approach is based on common assumptions such that the ground is locally planar and its distance to a camera is constant. The assumptions are usually valid in mobile robots and vehicles moving in indoor and on-road environments. Based on the assumptions, the scale factors are derived by finding the ground in locally reconstructed 3D points. Previously, kernel density estimation with a Gaussian kernel was applied to detect the ground plane, but it generated biased scale factors. This paper proposes an asymmetric Gaussian kernel to estimate unknown scale factors accurately. The asymmetric kernel is inspired from a probabilistic modeling of inliers and outliers, that is, 3D point can comes from the ground and also other objects such as buildings and trees. We experimentally verified that our asymmetric kernel had almost twice higher accuracy than the previous Gaussian kernel. Our experiments was based on an open-source visual odometry and two kinds of public datasets.
机译:规模歧义是单眼视觉内径和SLAM中的固有问题。我们的方法是基于共同的假设,使得地面是局部平面的,并且与相机的距离是恒定的。假设通常在移动机器人和在室内和道路环境中移动的车辆有效。基于假设,通过在本地重建的3D点中找到地面来导出比例因子。以前,应用了具有高斯内核的内核密度估计来检测接地平面,但它产生了偏置尺度因子。本文提出了一个不对称高斯内核,准确地估计未知的规模因素。非对称内核的启发来自入世和异常值的概率模型,即3D点可以来自地面,以及建筑物和树等其他物体。我们通过实验验证了我们的非对称内核比以前的高斯内核的准确性高差。我们的实验基于开源视觉测量和两种公共数据集。

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