单摄像机距离估计与目标检测框架

Junxian Ma, Chuyue Yu, Yiwei Xia, X. Ren, V. Tsviatkou, A. A. Boriskevich
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引用次数: 2

摘要

自动驾驶是近年来最热门的话题之一,受到了汽车行业和研究机构的广泛关注。为了保证驾驶员和行人的安全,有必要根据传感器收集的信息预测驾驶过程中可能出现的危险。车辆上使用的两个最重要的传感器是激光雷达和摄像头。它们分别用于测量距离和探测前方的物体。然而,激光雷达非常昂贵,这限制了它在自动驾驶中的应用。本文提出了一种利用单摄像机实现目标检测和相对距离估计的新框架。该框架在KITTI数据集的基准上进行了测试,其性能取决于框架中使用的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Framework for Estimating Distance and Detecting Object on Mono-camera
Autonomous driving is one of the hottest topics in recent years, receiving extensive attention from the automotive industry and research institutes. In order to ensure the safety of drivers and pedestrians, it is necessary to predict possible hazards during driving based on the information collected by sensors. The two most important sensors used on the vehicles are Lidar and cameras. They are used to measure the distance and detect objects on the front, respectively. However, Lidar is very expensive, which limits its use in autonomous driving. This paper presents a new framework, which uses the mono-camera to realize both object detection and relative distance estimation. The framework is tested on the benchmark of the KITTI dataset, its performance depends on the algorithms used in the framework.
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