Accurate Vehicle Detection Using Multi-camera Data Fusion and Machine Learning

Hao Wu, Xinxiang Zhang, B. Story, D. Rajan
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引用次数: 21

Abstract

Computer-vision methods have been extensively used in intelligent transportation systems for vehicle detection. However, the detection of severely occluded or partially observed vehicles due to the limited camera fields of view remains a challenge. This paper presents a multi-camera vehicle detection system that significantly improves the detection performance under occlusion conditions. The key elements of the proposed method include a novel multi-view region proposal network that localizes the candidate vehicles on the ground plane. We also infer the vehicle position on the ground plane by leveraging multi-view cross-camera context. Experiments are conducted on dataset captured from a roadway in Richardson, TX, USA, and the system attains 0.7849 Average Precision and 0.7089 Multi Object Detection Precision. The proposed system results in an approximately 31.2% increase in AP and 8.6% in MODP than the single-camera methods.
基于多摄像头数据融合和机器学习的精确车辆检测
计算机视觉方法已广泛应用于智能交通系统中的车辆检测。然而,由于有限的相机视野,严重遮挡或部分观察到的车辆的检测仍然是一个挑战。本文提出了一种多摄像头车辆检测系统,该系统显著提高了遮挡条件下的检测性能。该方法的关键要素包括一种新的多视图区域建议网络,该网络可以在地平面上定位候选车辆。我们还通过利用多视图跨摄像机上下文推断车辆在地平面上的位置。在美国德克萨斯州Richardson的道路数据集上进行了实验,系统的平均精度为0.7849,多目标检测精度为0.7089。与单相机相比,该系统的AP和MODP分别提高了31.2%和8.6%。
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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