Dynamic Dual-Peak Network: A real-time human detection network in crowded scenes

Yefan Xie, Jiangbin Zheng, Xuan Hou, Yue Xi, Fengming Tian

Research output: Contribution to journalArticlepeer-review

5 Scopus citations

Abstract

Human detection in crowded scenes is challenging since the objects occlude and overlap each other. Compared to general pedestrian detection, there is also more variation in human posture. This paper proposes a real-time human detection network, Dynamic Dual-Peak Network (DDPNet), which specifically addresses human object detection in overlapping and crowded scenes. We design a deep cascade fusion module to enhance the feature extraction capability of the anchor-free model for small objects in crowded scenes. In the meantime, the head–body dual-peak activation module is used to improve the prediction score of the central region of the occluded individual through low occlusion components. By this improvement strategy, the network's ability is enhanced to discriminate individuals in crowded scenes and alleviate the problem caused by individual posture variation. Ultimately, we propose a novel Exhale–Inhale method to adjust the feature mapping ranges for various scale objects dynamically. In the process of ground truth mapping, the overlapping of individual feature information is reduced. Our DDPNet achieves competitive performance on the CrowdHuman dataset and executes real-time inference of almost 3x∼7x faster than competitive methods.

Original languageEnglish
Article number103195
JournalJournal of Visual Communication and Image Representation
Volume79
DOIs
StatePublished - Aug 2021

Keywords

  • Anchor free
  • CNN
  • Crowded scenes
  • Human detection

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