基于卷积神经网络的单目视觉鲁棒车辆跟踪

Jakob Dichgans, Jan Kallwies, H. Wuensche
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引用次数: 1

摘要

在本文中,我们提出了一种鲁棒跟踪系统,使自动驾驶车辆能够跟随特定的车队领队。来自单个摄像机的图像用作输入数据,卷积神经网络从这些数据中检测出领先车辆上的预定义关键点。这种方法的灵感来自于人体姿态估计的想法,与YOLO等标准边界盒检测方法相比,这种方法被证明要准确得多。利用运动水平估计器实现了对前导车辆动态状态的估计。我们在实际实验中展示了该系统的实际功能和实用性。实验表明,尽管该跟踪系统只对图像进行操作,但与使用激光雷达等其他传感器的早期方法相比,它具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Vehicle Tracking with Monocular Vision using Convolutional Neuronal Networks
In this paper we present a robust tracking system that enables an autonomous vehicle to follow a specific convoy leader. Images from a single camera are used as input data, from which predefined keypoints on the lead vehicle are detected by a convolutional neural network. This approach was inspired by the idea of human pose estimation and is shown to be significantly more accurate compared to standard bounding box detection approaches like YOLO.The estimation of the dynamic state of the leading vehicle is realized by means of a moving horizon estimator. We show the practical capabilities and usefulness of the system in real-world experiments. The experiments show that the tracking system, although it only operates with images, is competitive with earlier approaches that also used other sensors such as LiDAR.
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