Recently, Vehicle-to-Everything(V2X) cooperative perception has attracted increasing attention. Infrastructure sensors play a critical role in this research field; however, how to find the optimal placement of infrastructure sensors is rarely studied. In this paper, we investigate the problem of infrastructure sensor placement and propose a pipeline that can efficiently and effectively find optimal installation positions for infrastructure sensors in a realistic simulated environment. To better simulate and evaluate LiDAR placement, we establish a Realistic LiDAR Simulation library that can simulate the unique characteristics of different popular LiDARs and produce high-fidelity LiDAR point clouds in the CARLA simulator. Through simulating point cloud data in different LiDAR placements, we can evaluate the perception accuracy of these placements using multiple detection models. Then, we analyze the correlation between the point cloud distribution and perception accuracy by calculating the density and uniformity of regions of interest. Experiments show that when using the same number and type of LiDAR, the placement scheme optimized by our proposed method improves the average precision by 15%, compared with the conventional placement scheme in the standard lane scene. We also analyze the correlation between perception performance in the region of interest and LiDAR point cloud distribution and validate that density and uniformity can be indicators of performance. Both the RLS Library and related code will be released at https://github.com/PJLab-ADG/LiDARSimLib-and-Placement-Evaluation.
翻译:最近,车辆到一切(V2X)合作观念引起了越来越多的关注;基础设施传感器在这一研究领域发挥着关键作用;然而,如何找到基础设施传感器的最佳位置很少研究;在本文件中,我们调查基础设施传感器安置问题并提出管道,以便在现实的模拟环境中为基础设施传感器找到最佳安装位置;为了更好地模拟和评价LiDAR定位,我们建立了一个现实的LIDAR模拟图书馆,可以模拟不同受欢迎的LIDAR的独特特征,并在CARLA模拟器中产生高纤维化的LIDAR点云。通过在不同的LIDAR定位中模拟点云数据,我们可以利用多种探测模型评估这些位置的准确性。然后,我们通过计算感兴趣的区域的密度和统一性来分析点云分布和准确性之间的相关性。实验表明,如果使用同样的数字和类型,我们拟议方法优化的安置计划可以提高平均精确度15 %,而标准车道/车道的常规安置计划则比标准车道/车道/车道/车道的常规安置计划更精确性。我们还可以分析这些定位定位点的准确性与REDLDRDL相关性指标的准确性,我们在标准/RDRDRDA/DRDA/DA/DA的分布和公布相关性指标的准确性能和公布。</s>