基于低角度摄像机的车辆检测与跟踪特征融合

Jun Yang, Yang Wang, A. Sowmya, Zhidong Li
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引用次数: 8

摘要

本文通过将挡风玻璃检测与特征点聚类相结合,有效融合颜色、边缘、兴趣点等多种原始图像特征,解决了低角度摄像机的车辆检测与跟踪问题。通过探索各种异质特征和多种车辆模型,我们至少在两个方面对现有方法进行了改进:更高的检测精度和区分不同车辆类型的能力。我们在真实的交通视频序列上的实验证明了特征融合的好处和改进的性能。
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Feature fusion for vehicle detection and tracking with low-angle cameras
In this paper, we address the problem of vehicle detection and tracking with low-angle cameras by combining windshield detection and feature points clustering, effectively fusing several primitive image features such as color, edge and interest point. By exploring various heterogenous features and multiple vehicle models, we achieve at least two improvements over the existing methods: higher detection accuracy and the ability to distinguish different vehicle types. Our experiments on real-world traffic video sequences demonstrate the benefits of feature fusion and the improved performance.
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