Atik Muhammed Enes, Duran Zaide
Department of Geomatics Engineering, Istanbul Technical University (ITU), Istanbul 34469, Turkey.
Sensors (Basel). 2022 Aug 18;22(16):6210. doi: 10.3390/s22166210.
Mobile light detection and ranging (LiDAR) sensor point clouds are used in many fields such as road network management, architecture and urban planning, and 3D High Definition (HD) city maps for autonomous vehicles. Semantic segmentation of mobile point clouds is critical for these tasks. In this study, we present a robust and effective deep learning-based point cloud semantic segmentation method. Semantic segmentation is applied to range images produced from point cloud with spherical projection. Irregular 3D mobile point clouds are transformed into regular form by projecting the clouds onto the plane to generate 2D representation of the point cloud. This representation is fed to the proposed network that produces semantic segmentation. The local geometric feature vector is calculated for each point. Optimum parameter experiments were also performed to obtain the best results for semantic segmentation. The proposed technique, called SegUNet3D, is an ensemble approach based on the combination of U-Net and SegNet algorithms. SegUNet3D algorithm has been compared with five different segmentation algorithms on two challenging datasets. SemanticPOSS dataset includes the urban area, whereas RELLIS-3D includes the off-road environment. As a result of the study, it was demonstrated that the proposed approach is superior to other methods in terms of mean Intersection over Union (mIoU) in both datasets. The proposed method was able to improve the mIoU metric by up to 15.9% in the SemanticPOSS dataset and up to 5.4% in the RELLIS-3D dataset.
移动激光探测与测距(LiDAR)传感器点云被应用于许多领域,如道路网络管理、建筑与城市规划以及用于自动驾驶车辆的3D高清(HD)城市地图。移动点云的语义分割对于这些任务至关重要。在本研究中,我们提出了一种基于深度学习的强大且有效的点云语义分割方法。语义分割应用于通过球面投影从点云生成的距离图像。通过将不规则的3D移动点云投影到平面上,将其转换为规则形式,以生成点云的二维表示。该表示被输入到所提出的生成语义分割的网络中。为每个点计算局部几何特征向量。还进行了最优参数实验以获得语义分割的最佳结果。所提出的技术称为SegUNet3D,是一种基于U-Net和SegNet算法组合的集成方法。SegUNet3D算法已在两个具有挑战性的数据集上与五种不同的分割算法进行了比较。SemanticPOSS数据集包括市区,而RELLIS-3D包括越野环境。研究结果表明,在两个数据集中,所提出的方法在平均交并比(mIoU)方面优于其他方法。所提出的方法在SemanticPOSS数据集中能够将mIoU指标提高多达15.9%,在RELLIS-3D数据集中能够提高多达5.4%。