论文标题

使用广义内部产品在自动驾驶中定位

Localization in Autonomous Vehicles Using a Generalized Inner Product

论文作者

Flanagan, Samuel Todd, Khublani, Drupad K., Chamberland, Jean-Francois, Agarwal, Siddharth, Vora, Ankit

论文摘要

自主驾驶平台中的良好本地化是一项广泛关注的任务,近年来引起了很多关注。某些定位算法使用欧几里得距离作为相机与摄像机获得的本地图像之间的相似性度量,该图像充当侧面信息。全球地图通常以路面的坐标系表示。然而,相机捕获的道路图像受到失真的影响,因为与距车辆前面的同等大小的功能相比,相机的焦平面附近的脚印在相机的焦平面上具有更大的足迹。使用商品计算工具,执行转换并因此将变形的图像带入全局地图的参考框架是很简单的。但是,这种非线性转化会导致不等的噪声扩增。试图将获得的图像与全局地图匹配时,应考虑由此转换引起的噪声概况,其中更可靠的区域在此过程中得到了更大的权重。这种物理现实为改善现有的本地化算法提供了算法的机会,尤其是在恶劣的条件下。本文通过相机回顾了道路功能的物理,并提出了一种植根于统计分析的改进的匹配方法。调查结果由数值模拟支持。

Fine localization in autonomous driving platforms is a task of broad interest, receiving much attention in recent years. Some localization algorithms use the Euclidean distance as a similarity measure between the local image acquired by a camera and a global map, which acts as side information. The global map is typically expressed in terms of the coordinate system of the road plane. Yet, a road image captured by a camera is subject to distortion in that nearby features on the road have much larger footprints on the focal plane of the camera compared with those of equally-sized features that lie farther ahead of the vehicle. Using commodity computational tools, it is straightforward to execute a transformation and, thereby, bring the distorted image into the frame of reference of the global map. However, this nonlinear transformation results in unequal noise amplification. The noise profile induced by this transformation should be accounted for when trying to match an acquired image to a global map, with more reliable regions being given more weight in the process. This physical reality presents an algorithmic opportunity to improve existing localization algorithms, especially in harsh conditions. This article reviews the physics of road feature acquisition through a camera, and it proposes an improved matching method rooted in statistical analysis. Findings are supported by numerical simulations.

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