Approaches on crowd counting and density estimation: a review

被引:0
|
作者
Bo Li
Hongbo Huang
Ang Zhang
Peiwen Liu
Cheng Liu
机构
[1] Beijing Information Science and Technology University,School of Electromechanical Engineering
[2] Beijing Information Science and Technology University,Computer School
[3] Beijing Information Science and Technology University,Institute of Computing Intelligence
[4] Beijing Information Science and Technology University,School of Information Management
来源
关键词
Crowd counting; Density estimation; Density map; Convolutional neural network; Deep learning;
D O I
暂无
中图分类号
学科分类号
摘要
In recent years, urgent needs for counting crowds and vehicles have greatly promoted research of crowd counting and density estimation. Benefiting from the rapid development of deep learning, the counting performance has been greatly improved, and the application scenarios have been further expanded. Aiming to deeply understand the development status of crowd counting and density estimation, we introduce and analyze the typical methods in this field and especially focus on elaborating deep learning-based counting methods. We summarize the existing approaches into four categories, i.e., detection-based, regression-based, convolutional neural network based and video-based. Each category is explicated in great detail. To provide more concrete reference, we compare the performance of typical methods on the popular benchmarks. We further elaborate on the datasets and metrics for the crowd counting community and discuss the work of solving the problem of small-sample-based counting, dataset annotation methods and so on. Finally, we summarize various challenges facing crowd counting and their corresponding solutions and propose a set of development trends in the future.
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页码:853 / 874
页数:21
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