基于软件的高级驾驶员辅助智能系统传感器融合算法

P. Kaur, R. Sobti
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引用次数: 3

摘要

集成到现代现代汽车中的智能和认知智能功能的多样性正在迅速上升。智能协同驾驶是物联网领域的几个应用之一,其中汽车与道路上的其他车辆交互,并智能地提供精简的交通流量。使这项技术成功的主要因素是安装在每辆车上的传感装置。本文的主要目的是讨论未来自动驾驶汽车的安全性,自动驾驶汽车将与其他汽车共享道路上即将发生的危险信息。本文概述了自动驾驶汽车在车对车交互过程中传感器数据融合出现的几个问题、不确定性和不准确性。不同传感器的信息更新速度不同,导致场景理解不正确。几份调查报告结果显示,未来传感器在汽车市场的使用将达到数十亿美元。如果智能汽车能向附近的汽车明确地传递信息,就能保证汽车的安全。
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Sensor Fusion Algorithm For Software Based Advanced Driver-Assistance Intelligent Systems
The diversity of smart and cognitively intelligent features integrated into the modern contemporary cars is rising rapidly. Intelligent cooperative driving is one of the several applications of the IOT field in which cars interact with other vehicles on road and provide a streamlined flow of traffic smartly. The main ingredients for making this technology successful are the sensing devices mounted on every vehicle. The main purpose of this paper is to discuss the safety of future autonomous vehicles which will be sharing information of impending hazards on road with other cars. The paper provides an overview of several problems, uncertainties, and inaccuracies emerging from sensor data fusion during car-to-car interaction in autonomous vehicles. The rate at which some sensors update their information is different for different sensors which lead to incorrect scene comprehension. Several survey report results are provided showing evidence of future sensor usage in the automotive market which accounts for billions of dollars. Safety in smart cars can be guaranteed if they communicate information unambiguously to nearby cars in their vicinity.
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