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VPC-Net: Completion of 3D vehicles from MLS point clouds

机译:VPC-Net:从MLS点云完成3D车辆

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摘要

As a dynamic and essential component in the road environment of urban scenarios, vehicles are the most popular investigation targets. To monitor their behavior and extract their geometric characteristics, an accurate and instant measurement of vehicles plays a vital role in traffic and transportation fields. Point clouds acquired from the mobile laser scanning (MLS) system deliver 3D information of road scenes with unprecedented detail. They have proven to be an adequate data source in the fields of intelligent transportation and autonomous driving, especially for extracting vehicles. However, acquired 3D point clouds of vehicles from MLS systems are inevitably incomplete due to object occlusion or self-occlusion. To tackle this problem, we proposed a neural network to synthesize complete, dense, and uniform point clouds for vehicles from MLS data, named Vehicle Points Completion-Net (VPC-Net). In this network, we introduce a new encoder module to extract global features from the input instance, consisting of a spatial transformer network and point feature enhancement layer. Moreover, a new refiner module is also presented to preserve the vehicle details from inputs and refine the complete outputs with fine-grained information. Given sparse and partial point clouds as inputs, the network can generate complete and realistic vehicle structures and keep the fine-grained details from the partial inputs. We evaluated the proposed VPC-Net in different experiments using synthetic and real-scan datasets and applied the results to 3D vehicle monitoring tasks. Quantitative and qualitative experiments demonstrate the promising performance of the proposed VPC-Net and show state-of-the-art results.
机译:作为城市情景道路环境中的动态和重要组成部分,车辆是最流行的调查目标。为了监控其行为并提取其几何特征,准确且即时测量车辆在交通和运输领域起着至关重要的作用。从移动激光扫描(MLS)系统获取的点云以前所未有的细节提供道路场景的3D信息。他们已被证明是智能运输和自主驾驶领域的适当数据来源,特别是用于提取车辆。然而,由于物体闭塞或自动阻塞,MLS系统的获取3D点云不可避免地不完整。为了解决这个问题,我们提出了一个神经网络,用于从MLS数据中为车辆合成完整的,密集和均匀的点云,命名为车辆点完成 - 网(VPC-Net)。在该网络中,我们介绍了一个新的编码器模块,以从输入实例中提取全局功能,包括空间变压器网络和点特征增强层。此外,还介绍了一种新的炼油厂模块以保护从输入中的车辆细节,并通过细粒度的信息优化完整的输出。给定稀疏和部分点云作为输入,网络可以生成完整和现实的车辆结构,并将细粒细节从部分输入中保留。我们使用合成和实际扫描数据集评估了不同实验中提出的VPC-Net,并将结果应用于3D车辆监控任务。定量和定性实验证明了提出的VPC-Net的有希望的性能,并显示出最先进的结果。

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