A Lightweight Deep and Wide Network for Image-Based Detection of Industrial Waste Gas

  • Ke GU
  • , Hongyan LIU*
  • , Jingchao CAO
  • , Lai-Kuan WONG
  • , Junfei QIAO
  • , Guangtao ZHAI
  • , Wenjun ZHANG
  • , Weisi LIN
  • , Sam KWONG
  • *Corresponding author for this work

Research output: Journal PublicationsJournal Article (refereed)peer-review

Abstract

Due to inadequate monitoring, key pollutants (e.g., PM2.5, VOCs, etc) very possibly leak into atmosphere, thus to endanger the long-term and short-term life safety of people that work and live in the environment. Therefore, it is imperative to effectively and efficiently detect the leakage of industrial waste gas, for the purpose of timely lowering the risk of pollution and explosions. To solve such a problem, we in this paper propose a new lightweight deep and wide network (LdwNet) for detecting the leakage of industrial waste gas from an image, which brings about the two main merits: 1) Compensating for the deficiencies of sensor-based detection methods, which can accurately detect the leakage of waste gas and even measure its concentrations but require to seek leakage sources beforehand; 2) Overcoming the shortcomings of image-based detection methods, which leverage DNN-based recognition technologies and usually suffer from low efficacy, low efficiency and high energy consumption during the model training and inference. To specify, the proposed LdwNet is developed by simulating human perception, motivated by the method which detects the leakage of industrial waste gas from surveillance images with the human observation and judgement. First, based on the inspiration that the human eyes are highly sensitive to horizontal and vertical stimuli, we construct a novel lightweight parallel-series-stripe (PS2) module to validly extract features with very few parameters. Second, to fully exploit deep and shallow features for fusing the global and local information, we extend the PS2 module as a backbone along both the deep and wide directions to build the multi-channel network. Third, to achieve effective, efficient and low-carbon detection in model running, we constraint the extended PS2 modules with parameter sharing to prodigiously reduce the model parameters and thus to make the proposed model ultra-lightweight. Experiments on the datasets of carbon particulate matters and ethylene leakage prove that our LdwNet with ten thousand parameters outperforms the state-of-the-art models with millions of parameters in detection accuracy and implementation cost, and this renders our proposed LdwNet more suitable for real industrial applications.
Original languageEnglish
Number of pages12
JournalIEEE Transactions on Circuits and Systems for Video Technology
DOIs
Publication statusE-pub ahead of print - 26 Jan 2026

Funding

This work was supported by the National Key Research and Development Program of China under Grant 2024YFE0100500, and in part by the National Natural Science Foundation of China under Grant 62322302, Grant 62273011, Grant 62225112, and Grant 62431015.

Keywords

  • Industrial waste gas
  • industrial vision
  • leakage detection
  • deep and wide neural network
  • lightweight

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