2023
DOI: 10.3390/s23239492
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A Lightweight Model for Real-Time Detection of Vehicle Black Smoke

Ke Chen,
Han Wang,
Yingchao Zhai

Abstract: This paper discusses the application of deep learning technology in recognizing vehicle black smoke in road traffic monitoring videos. The use of massive surveillance video data imposes higher demands on the real-time performance of vehicle black smoke detection models. The YOLOv5s model, known for its excellent single-stage object detection performance, has a complex network structure. Therefore, this study proposes a lightweight real-time detection model for vehicle black smoke, named MGSNet, based on the YO… Show more

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