Vehicle Verification Using Deep Learning for Connected Vehicle Sharing Systems

Hansi Liu
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引用次数: 3

Abstract

Information sharing in connected vehicle systems helps each participating vehicle to have a more complete and expanded sensing range beyond its own sensing capability. When sharing visual traffic information among vehicle nodes, it is of great significance to identify overlapping components and associate objects in common to create an accurate and complete surrounding scene. This paper Extends FusionEye, a study of perception sharing, by exploring deep learning approaches for real time vehicle verification tasks. We propose two deep neural network architectures inspired by ResNet and train the neural networks using FusionEye's dataset. Preliminary results show that when learning from vehicle's appearances and kinematic information, the verification accuracy reaches $92%$, which provides possible solution for real time system.
基于深度学习的互联汽车共享系统车辆验证
互联汽车系统的信息共享使每辆参与的汽车在自身感知能力之外拥有更完整、更广泛的感知范围。在车辆节点之间共享视觉交通信息时,识别重叠的组件,共同关联物体,创建准确完整的周围场景具有重要意义。本文通过探索用于实时车辆验证任务的深度学习方法,扩展了感知共享研究FusionEye。我们提出了受ResNet启发的两种深度神经网络架构,并使用FusionEye的数据集训练神经网络。初步结果表明,在学习车辆外观和运动信息时,验证精度达到92%,为实时系统提供了可能的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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