A New Adaptive Bidirectional Region-of-Interest Detection Method for Intelligent Traffic Video Analysis

Hadi Ghahremannezhad, Hang Shi, Chengjun Liu
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引用次数: 2

Abstract

Real-time intelligent video-based traffic surveillance applications play an important role in intelligent transportation systems. To reduce false alarms as well as to increase computational efficiency, robust road segmentation for automated Region of Interest (RoI) detection becomes a popular focus in the research community. A novel Adaptive Bidirectional Detection (ABD) of region-of-interest method is presented in this paper to automatically segment the roads with bidirectional traffic flows into two regions of interest. Specifically, a foreground segmentation method is first applied along with the flood-fill algorithm to estimate the road regions. Then the Lucas-Kanade’s optical flow algorithm is utilized to track and divide the estimated road into regions of interest in real-time. Experimental results using a dataset of real traffic videos illustrate the feasibility of the proposed method for automatically determining the RoIs in real-time.
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一种用于智能交通视频分析的自适应双向兴趣区域检测方法
基于实时智能视频的交通监控应用在智能交通系统中发挥着重要作用。为了减少误报和提高计算效率,鲁棒道路分割自动感兴趣区域(RoI)检测成为研究领域的热点。提出了一种基于兴趣区域的自适应双向检测方法,将具有双向交通流的道路自动分割为两个兴趣区域。具体而言,首先将前景分割方法与洪水填充算法一起应用于道路区域估计。然后利用Lucas-Kanade光流算法实时跟踪并将估计的道路划分为感兴趣的区域。基于真实交通视频数据集的实验结果验证了该方法实时自动确定roi的可行性。
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