Vision-based garbage dumping action detection for real-world surveillance platform

Kimin Yun, Yongjin Kwon, Sungchan Oh, Jinyoung Moon, Jongyoul Park

Research output: Contribution to journalArticlepeer-review

56 Scopus citations

Abstract

In this paper, we propose a new framework for detecting the unauthorized dumping of garbage in real-world surveillance camera. Although several action/behavior recognition methods have been investigated, these studies are hardly applicable to real-world scenarios because they are mainly focused on well-refined datasets. Because the dumping actions in the real-world take a variety of forms, building a new method to disclose the actions instead of exploiting previous approaches is a better strategy. We detected the dumping action by the change in relation between a person and the object being held by them. To find the person-held object of indefinite form, we used a background subtraction algorithm and human joint estimation. The person-held object was then tracked and the relation model between the joints and objects was built. Finally, the dumping action was detected through the voting-based decision module. In the experiments, we show the effectiveness of the proposed method by testing on real-world videos containing various dumping actions. In addition, the proposed framework is implemented in a real-time monitoring system through a fast online algorithm.

Original languageEnglish
Pages (from-to)494-505
Number of pages12
JournalETRI Journal
Volume41
Issue number4
DOIs
StatePublished - 2019

Keywords

  • action recognition
  • garbage dumping action
  • human-object relation
  • machine vision application
  • visual surveillance

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