基于集成深度网络的大图像密集车辆检测

Jae-Hyoung Yu, Youngjoon Han, Jongkuk Kim, H. Hahn
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引用次数: 0

摘要

[摘要]本文提出了一种对大图像中密集小型车辆进行高效检测的算法。它由两种基于粗变细方法的集成深度学习网络算法组成。该系统可以对选定的子图像进行准确的车辆检测。在粗化步骤中,可以分别利用各种深度学习网络的结果来构造投票空间。为了选择子区域,将每个投票空间组合成投票地图。在精细步骤中,将粗步中选择的子区域转移到最终的深度学习网络中。子区域可以通过使用动态窗口来定义。本文使用预定义映射表来定义透视道路图像的动态窗口。在每个子区域上移动的车辆的身份判断是由被检测车辆箱体信息的最底部中心点确定的。并通过连续图像上的车辆箱体信息进行跟踪。利用CCTV在道路上捕获的日夜图像,对该算法的检测性能和成本进行了实时评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Deep Network for Dense Vehicle Detection in Large Image
[Abstract] This paper has proposed an algorithm that detecting for dense small vehicle in large image efficiently. It is consisted of two Ensemble Deep-Learning Network algorithms based on Coarse to Fine method. The system can detect vehicle exactly on selected sub image. In the Coarse step, it can make Voting Space using the result of various Deep-Learning Network individually. To select sub-region, it makes Voting Map by to combine each Voting Space. In the Fine step, the sub-region selected in the Coarse step is transferred to final Deep-Learning Network. The sub-region can be defined by using dynamic windows. In this paper, pre-defined mapping table has used to define dynamic windows for perspective road image. Identity judgment of vehicle moving on each sub-region is determined by closest center point of bottom of the detected vehicle's box information. And it is tracked by vehicle's box information on the continuous images. The proposed algorithm has evaluated for performance of detection and cost in real time using day and night images captured by CCTV on the road.
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