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VANET Meets Deep Learning: The Effect of Packet Loss on the Object Detection Performance

机译:VANET满足深度学习的要求:数据包丢失对对象检测性能的影响

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The integration of machine learning and inter- vehicle communications enables various active safety measures in internet-of-vehicles. Specifically, the environmental perception is processed by the deep learning module from vehicular sensor data, and the extended perception range is achieved by exchanging traffic-related information through inter-vehicle communications. Under such condition, the intelligent vehicles can not only percept the surrounding environment from self-collected sensor data, but also expand their perception range through the information sharing mechanism of Vehicular Ad-hoc Network (VANET). However, the dynamic urban environment in VANET leads to a number of issues, such as the effect of packet loss on the real-time perception accuracy of the received sensor data. In this work, we propose a point cloud object detection module via an end-to-end deep learning system and enable wireless communications between vehicles to enhance driving safety and facilitate real-time 3D mapping construction. Besides, we build a semi- realistic traffic scenario based on the Mong Kok district in Hong Kong to analyze the network performance of data dissemination under the dynamic environment. Finally, we evaluate the impact of data loss on the deep-learning-based object detection performance. Our results indicate that data loss beyond 50% (which is a common scene based on our simulation) can lead to a rapid decline of the object detection accuracy.
机译:机器学习和车辆间通信的集成实现了车联网中各种主动安全措施。具体而言,深度学习模块根据车辆传感器数据处理环境感知,并且通过车辆间通信交换与交通相关的信息来实现扩大的感知范围。在这种情况下,智能汽车不仅可以从自身收集的传感器数据中感知周围环境,而且可以通过车载自组织网络(VANET)的信息共享机制扩展其感知范围。但是,VANET中动态的城市环境导致许多问题,例如数据包丢失对接收到的传感器数据的实时感知准确性的影响。在这项工作中,我们通过端到端深度学习系统提出了一个点云对象检测模块,并使车辆之间的无线通信能够提高驾驶安全性并促进实时3D映射的构建。此外,我们在香港旺角地区建立了一个半现实的交通场景,以分析动态环境下数据分发的网络性能。最后,我们评估了数据丢失对基于深度学习的对象检测性能的影响。我们的结果表明,数据丢失超过50%(根据我们的模拟,这是一个常见的场景)会导致物体检测精度迅速下降。

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