Single Camera Object Detection for Self-Driving Vehicle: A Review

S. Herman, K. Ismail
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引用次数: 3

Abstract

The development of technologies for autonomous vehicle (AV) have seen rapid achievement in the recent years. Commercial carmakers are actively embedding this system in their production and are undergoing tremendous testing in the real world traffic environment. It is one of today’s most challenging topics in the intelligent transportation system (ITS) field in term of reliability as well as accelerating the world’s transition to a sustainable future. The utilization of current sensor technology however indicates some drawbacks where the complexity is high and the cost is extremely huge. This paper reviews the recent sensor technologies and their contributions in becoming part of the autonomous self-driving vehicle system. The ultimate focus is toward reducing the sensor count to just a single camera based on the single modality model. The capability of the sensor to detect and recognize on-the-road obstacles such as overtaking vehicle, pedestrians, signboards, bicycle, road lane marker and road curvature will be discussed. Different feature extraction approach will be reviewed further with the selection of the recent Artificial Intelligent (AI) methods that are being implemented. At the end of this review, the optimal techniques of processing information from single camera system will be discussed and summarized.
自动驾驶车辆单摄像头目标检测技术综述
近年来,自动驾驶汽车技术的发展取得了迅速的成就。商用汽车制造商正在积极地将这一系统嵌入到他们的生产中,并正在现实世界的交通环境中进行大量测试。就可靠性以及加速世界向可持续未来的过渡而言,它是当今智能交通系统(ITS)领域最具挑战性的课题之一。然而,现有的传感器技术的应用存在着复杂性高、成本巨大的缺点。本文综述了最新的传感器技术及其对自动驾驶汽车系统的贡献。最终的焦点是将传感器数量减少到基于单一模态模型的单个相机。将讨论传感器检测和识别道路上障碍物的能力,如超车车辆,行人,招牌,自行车,道路车道标记和道路曲率。不同的特征提取方法将进一步回顾,并选择最近正在实施的人工智能(AI)方法。在本文的最后,将讨论和总结单相机系统信息处理的最佳技术。
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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