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    叶鑫

    • 教授     博士生导师   硕士生导师
    • 主要任职:经济管理学院院长、党委副书记
    • 其他任职:电子政务模拟仿真国家地方联合工程研究中心 副主任
    • 性别:男
    • 毕业院校:大连理工大学
    • 学位:博士
    • 所在单位:经济管理学院
    • 办公地点:经济管理学院C313
    • 电子邮箱:yexin@dlut.edu.cn

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    Crowd counting considering network flow constraints in videos

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    论文类型:期刊论文

    发表时间:2021-01-25

    发表刊物:IET IMAGE PROCESSING

    卷号:12

    期号:1

    页面范围:11-19

    ISSN号:1751-9659

    关键字:video surveillance; pedestrians; quadratic programming; image segmentation; regression analysis; directed graphs; network flow constraint; security threat probability; pedestrians; quadratic programming model; crowd counting accuracy improvement; frame foreground segmentation; regression-based map; low-level features; directed graph; integer flow; digraph; QP problem; people counting; ultramodern group-based regression counting approach; intelligent video surveillance systems

    摘要:The growth of the number of people in the monitoring scene may increase the probability of security threat, which makes crowd counting more and more important. Most of the existing approaches estimate the number of pedestrians within one frame, which results in inconsistent predictions in terms of time. This study, for the first time, introduces a quadratic programming (QP) model with the network flow constraints to improve the accuracy of crowd counting. Firstly, the foreground of each frame is segmented into groups, each of which contains several pedestrians. Then, a regression-based map is developed in accordance with the relationship between low-level features of each group and the number of people in it. Secondly, a directed graph is constructed to simulate constraints on people's flow, whose vertices represent groups of each frame and arcs represent people moving from one group to another. Finally, by solving a QP problem with network flow constraints in the directed graph, the authors obtain consistency in people counting. The experimental results show that the proposed method can reduce the crowd counting errors and improve the accuracy. Moreover, this method can also be applied to any ultramodern group-based regression counting approach to get improvements.