基于多图像特征的车辆跟踪与距离估计

Yixin Chen, M. Das, D. Bajpai
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引用次数: 21

摘要

本文介绍了一种基于多图像特征的车辆跟踪算法,用于防撞系统中前车的检测和跟踪。该算法利用图像的角、边、梯度、车辆对称性等多种特征,结合图像匹配技术对车辆底部角、边缘进行鲁棒检测,并对车辆宽度进行估计。基于估计的车辆宽度,使用几个预先选择的边缘模板来匹配图像边缘,使我们能够估计车辆高度,以及前车与主车之间的距离。给出了一些基于真实世界视频图像的实验结果。这些似乎表明,该算法能够识别前方车辆,跟踪它,并估计其与主车辆的距离。
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Vehicle Tracking and Distance Estimation Based on Multiple Image Features
In this paper, we introduce a vehicle tracking algorithm based on multiple image features to detect and track the front car in a collision avoidance system (CAS) application. The algorithm uses multiple image features, such as corner, edge, gradient, vehicle symmetry property, and image matching technique to robustly detect the vehicle bottom corners and edges, and estimate the vehicle width. Based on the estimated vehicle width, a few pre-selected edge templates are used to match the image edges that allow us to estimate the vehicle height, and also the distance between the front vehicle and the host vehicle. Some experimental results based on real world video images are presented. These seem to indicate that the algorithm is capable of identifying a front vehicle, tracking it, and estimating its distance from the host vehicle.
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