Affiliation:
1. Transportation Safety Unit, Construction Division, Korea Conformity Laboratories (KCL), Nambusunhwan-ro 319-gil, Seocho-gu, Seoul 06711, Republic of Korea
Abstract
This research aims to assess the functionality of the VLP-32 LiDAR sensor, which serves as the principal sensor for object recognition in autonomous vehicles. The evaluation is conducted by simulating edge conditions the sensor might encounter in a controlled darkroom setting. Parameters for environmental conditions under examination encompass measurement distances ranging from 10 to 30 m, varying rainfall intensities (0, 20, 30, 40 mm/h), and different observation angles (0°, 30°, 60°). For the material aspects, the investigation incorporates reference materials, traffic signs, and road surfaces. Employing this diverse set of conditions, the study quantitatively assesses two critical performance metrics of LiDAR: intensity and NPC (number of point clouds). The results indicate a general decline in intensity as the measurement distance, rainfall intensity, and observation angles increase. Instances were identified where the sensor failed to record intensity for materials with low reflective properties. Concerning NPC, both the effective measurement area and recorded values demonstrated a decreasing trend with enlarging measurement distance and angles of observation. However, NPC metrics remained stable despite fluctuations in rainfall intensity.
Funder
Korea National Police Agency
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference27 articles.
1. World Health Organization (2021, December 20). Road Traffic Injuries. Available online: https://www.who.int/news-room/fact-sheets/detail/road-traffic-injuries.
2. Traffic sign recognition based on deep learning;Zhu;Multimed. Tools Appl.,2022
3. RIECNN: Real-time image enhanced CNN for traffic sign recognition;Mostafa;Neural Comput. Appl.,2022
4. Lu, E.H.C., Gozdzikiewicz, M., Chang, K.H., and Ciou, J.M. (2022). A hierarchical approach for traffic sign recognition based on shape detection and image classification. Sensors, 22.
5. Comparison of expected crash and injury reduction from production forward collision and lane departure warning systems;Kusano;Traffic Inj. Prev.,2015