An Overview of Crowd Counting on Traditional and CNN-based Approaches

Xinyu Chen, Mingzhe Liu, Jun Ren, Chuan Zhao
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Abstract

Crowd counting, which is one of the primary research lines of computer vision, has achieved significant advancement due to the affordable computational cost, and it is a particularly useful means of ensuring public security in public places, especially in crowded places. In recent years, crowd counting methods based on public places have emerged one after another given crowd congestion. Firstly, this paper introduces in detail from traditional approaches to deep learning approaches, focusing on crowd counting approaches based on the convolution neural network (CNN), and compares and analyzes the advantages and disadvantages of each approach. Next, this paper summarizes the commonly used datasets and the main indicators of evaluating crowd counting algorithms. Finally, this paper expounds on the challenges existing in the field of crowd counting and the possible research directions in the future.
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传统和基于cnn的人群计数方法综述
人群计数是计算机视觉的主要研究方向之一,由于计算成本低廉,已经取得了很大的进步,是保障公共场所特别是人群密集场所公共安全的一种特别有用的手段。近年来,在人群拥挤的情况下,基于公共场所的人群统计方法层出不穷。本文首先详细介绍了从传统方法到深度学习方法,重点介绍了基于卷积神经网络(CNN)的人群计数方法,并对每种方法的优缺点进行了比较和分析。其次,本文总结了常用的数据集和评价人群计数算法的主要指标。最后,本文阐述了人群计数领域存在的挑战和未来可能的研究方向。
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