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Sensor and Sensor Fusion Technology in Autonomous Vehicles: A Review

期刊

SENSORS
卷 21, 期 6, 页码 -

出版社

MDPI
DOI: 10.3390/s21062140

关键词

autonomous vehicles; self-driving cars; perception; camera; lidar; radar; sensor fusion; calibration; obstacle detection

资金

  1. Science Foundation Ireland [13/RC/2094_P2]
  2. European Regional Development Fund through the Southern & Eastern Regional Operational Programme

向作者/读者索取更多资源

Automated driving is becoming a pivotal technology in transforming the future of transportation with advancements in sensor and communication technology. Sensor calibration is crucial for ensuring the safety and feasibility of automated driving vehicles, while sensor fusion and obstacle detection techniques play a critical role in the successful implementation of autonomous driving systems.
With the significant advancement of sensor and communication technology and the reliable application of obstacle detection techniques and algorithms, automated driving is becoming a pivotal technology that can revolutionize the future of transportation and mobility. Sensors are fundamental to the perception of vehicle surroundings in an automated driving system, and the use and performance of multiple integrated sensors can directly determine the safety and feasibility of automated driving vehicles. Sensor calibration is the foundation block of any autonomous system and its constituent sensors and must be performed correctly before sensor fusion and obstacle detection processes may be implemented. This paper evaluates the capabilities and the technical performance of sensors which are commonly employed in autonomous vehicles, primarily focusing on a large selection of vision cameras, LiDAR sensors, and radar sensors and the various conditions in which such sensors may operate in practice. We present an overview of the three primary categories of sensor calibration and review existing open-source calibration packages for multi-sensor calibration and their compatibility with numerous commercial sensors. We also summarize the three main approaches to sensor fusion and review current state-of-the-art multi-sensor fusion techniques and algorithms for object detection in autonomous driving applications. The current paper, therefore, provides an end-to-end review of the hardware and software methods required for sensor fusion object detection. We conclude by highlighting some of the challenges in the sensor fusion field and propose possible future research directions for automated driving systems.

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