Challenges of Localization Algorithms for Autonomous Driving

IF 0.5 Q4 ENGINEERING, CHEMICAL
H. Medve, D. Fodor
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引用次数: 1

Abstract

One could easily believe that the technology surrounding us is already easily capable of determining the current location of a vehicle. Whilst many devices, technologies, mathematical models and methods are available in the automotive world, the complexity of the localization problem still cannot be underestimated. The expectation is to determine in real time with a high degree of accuracy the location of a vehicle in order to make correct autonomous decisions and avoid dangerous and potentially damaging situations. Various research directions have been undertaken since the birth of autonomous driving from the well-known satellite navigation-based systems that rely on offline maps to the more sophisticated approaches that use odometry and existing sensor data using sensor fusion. The aim of the current work is to review what has been achieved so far in this field and the challenges ahead, e.g. the need for a change in paradigm as today's global positioning systems are not intended for machines but humans and are based on the abstraction of human thinking and human decision-making processes.
自动驾驶定位算法面临的挑战
人们很容易相信,我们周围的技术已经很容易确定车辆的当前位置。尽管汽车界有许多设备、技术、数学模型和方法,但定位问题的复杂性仍然不容低估。期望以高精度实时确定车辆的位置,以便做出正确的自主决策,避免危险和潜在的破坏性情况。自自动驾驶诞生以来,已经开展了各种研究方向,从众所周知的依赖离线地图的基于卫星导航的系统,到使用里程计和使用传感器融合的现有传感器数据的更复杂方法。当前工作的目的是回顾迄今为止在这一领域取得的成就和未来的挑战,例如,需要改变范式,因为今天的全球定位系统不是为机器而设计的,而是基于人类思维和决策过程的抽象。
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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来源期刊
自引率
50.00%
发文量
9
审稿时长
6 weeks
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