基于全向图像和惯性测量的鲁莽运动估计

Dennis W. Strelow, Sanjiv Singh
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引用次数: 13

摘要

从图像序列中提高相机运动估计精度的两种方法是使用全向相机,它将传统相机与放大视场的凸面镜结合在一起,以及同时使用图像和惯性测量,这两种方法是高度互补的。在本文中,我们描述了从常规或全向图像中估计运动和场景结构的最优批处理算法,有或没有惯性数据。我们还提出了一种基于惯性数据和图像投影的切向分量的运动估计方法。切向分量在广泛的常规和全向投影模型中是相同的,因此所得到的方法不需要任何精确的投影模型。由于该方法丢弃了一半的投影数据(即径向分量),并且可以使用可能严重错误建模实际摄像机行为的投影模型,因此我们将该方法称为“鲁莽”运动估计,但我们表明使用该方法估计的摄像机位置和场景结构可以相当准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reckless motion estimation from omnidirectional image and inertial measurements
Two approaches to improving the accuracy of camera motion estimation from image sequences are the use of omnidirectional cameras, which combine a conventional camera with a convex mirror that magnifies the field of view, and the use of both image and inertial measurements, which are highly complementary. In this paper, we describe optimal batch algorithms for estimating motion and scene structure from either conventional or omnidirectional images, with or without inertial data. We also present a method for motion estimation from inertial data and the tangential components of image projections. Tangential components are identical across a wide range of conventional and omnidirectional projection models, so the resulting method does not require any accurate projection model. Because this method discards half of the projection data (i.e., the radial components) and can operate with a projection model that may grossly mismodel the actual camera behavior, we call the method "reckless" motion estimation, but we show that the camera positions and scene structure estimated using this method can be quite accurate.
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