Sensors (Mar 2024)

A Dilated Convolutional Neural Network for Cross-Layers of Contextual Information for Congested Crowd Counting

  • Zhiqiang Zhao,
  • Peihong Ma,
  • Meng Jia,
  • Xiaofan Wang,
  • Xinhong Hei

DOI
https://doi.org/10.3390/s24061816
Journal volume & issue
Vol. 24, no. 6
p. 1816

Abstract

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Crowd counting is an important task that serves as a preprocessing step in many applications. Despite obvious improvement reported by various convolutional-neural-network-based approaches, they only focus on the role of deep feature maps while neglecting the importance of shallow features for crowd counting. In order to surmount this issue, a dilated convolutional-neural-network-based cross-level contextual information extraction network is proposed in this work, which is abbreviated as CL-DCNN. Specifically, a dilated contextual module (DCM) is constructed by importing cross-level connection between different feature maps. It can effectively integrate contextual information while conserving the local details of crowd scenes. Extensive experiments show that the proposed approach outperforms state-of-the-art approaches using five public datasets, i.e., ShanghaiTech part A, ShanghaiTech part B, Mall, UCF_CC_50 and UCF-QNRF, achieving MAE 52.6, 8.1, 1.55, 181.8, and 96.4, respectively.

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