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Safety Helmet Detection Based on Lightweight YOLOv8 |
College of Physics and Information Engineering |
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Abstract
Helmet detection is a computer vision task with important application value, involving safety management in many fields
such as construction sites, mines, and electric power. However, helmet detection also faces many challenges, such as large changes
in target size and aspect ratio, rapid changes in target velocity, target occlusion, and background interference. In order to solve these
problems, this paper proposes a safety helmet detection method based on YOLOv8, which uses the characteristics of high speed and
high precision of YOLOv8 combined with the characteristics of safety helmets to achieve effective detection and identification of
safety helmets.
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Published: 11 May 2024
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