使用相机几何和深度学习的夜间车辆距离估计

Trong-Hop Do, Dang-Khoa Tran, Dinh-Quang Hoang, Minh Pham, Quang-Dung Pham, Nhu-Ngoc Dao, Chunghyun Lee, Sungrae Cho
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引用次数: 0

摘要

车辆距离估计一直是交通视频处理中的一个重要课题。已经提出了许多算法来处理这个问题。但是,这些算法都存在处理时间长、数据需求量大、计算量消耗大、响应精度低等缺点。在这种情况下,本文提出了一种基于深度学习和相机几何相结合的车辆距离估计算法。该算法具有快速的处理时间,这得益于基于深度学习的技术。此外,由于相机几何结构的简单性,该算法需要最少的数据来进行估计。该算法将深度学习与相机几何相结合,在保持模型简单快速的同时,提供了较高的估计精度。通过实验结果验证了所提算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Night-Time Vehicle Distance Estimation Using Camera Geometry and Deep Learning
Vehicle distance estimation has been considered as one of the important topics in traffic video processing. There have been many algorithms proposed to deal with this problem. However, these algorithms all have their own drawbacks such as long processing duration, huge data requirements, extremely computational consumption, and low accuracy response. In this circumstance, in this paper, a novel algorithm based on a combination of deep learning and camera geometry is proposed for vehicle distance estimation. The proposed algorithm demonstrates fast processing duration which is contributed by the deep learning base technique. Moreover, thanks to the simplicity of camera geometry, the proposed algorithm requires minimal data to perform the estimation. By combining deep learning and camera geometry, the proposed algorithm can provide high estimation accuracy while keeping the model simple and fast. The performance of the proposed algorithm is verified through experiments results.
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