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SMART FIRE ROBOTS: FLAME RECOGNITION AND TRACKING USING STC89C52 FOR IMPROVED SAFETY

Wei Liu Cheng
Published 25 June 2024
Vol. 1, No. 1 (2024)
pp. 33-40
CC BY 4.0
  1. 1
    Wei Liu Cheng
    Department of Electrical Engineering and Automation, Anhui University, Hefei, China
    CN

Fire robots, a distinct category of robotic technology, serve as formidable substitutes for human firefighters in the midst of perilous fire emergencies marked by high temperatures, thick smoke, and oxygen depletion. These versatile automatons are capable of executing critical missions, including smoke ventilation and cooling, fire suppression, and reconnaissance and rescue operations. The deployment of intelligent fire robots in firefighting and rescue operations significantly enhances efficiency, concurrently safeguarding the well-being of human firefighters to the utmost extent. Among the pivotal components in the realm of fire robot research, flame recognition technology assumes a paramount role. The global landscape of flame recognition and detection technology exhibits a rich tapestry of in-depth exploration, encompassing traditional flame detectors and sensors, alongside innovative digital image recognition techniques underpinned by emerging paradigms like artificial intelligence, pattern recognition, and neural networks. In comparison to the advanced state of international research in this domain, China's endeavors lag slightly behind. Evidently, the majority of flame detectors employed within domestic industries are imported products. Consequently, an in-depth exploration of indigenous flame recognition technology is imbued with practical significance, presenting an avenue for innovation and development.

JournalColumbia Journal of Engineering and Technology
ISSN3065-0437
Volume / IssueVol. 1, No. 1 (2024)
Pages33-40
Published25 June 2024
Access Open Access
LicenseCC BY 4.0 — reuse with attribution
PublisherKeith Publications
Cheng , W. (2024). SMART FIRE ROBOTS: FLAME RECOGNITION AND TRACKING USING STC89C52 FOR IMPROVED SAFETY . Columbia Journal of Engineering and Technology, Vol. 1 No. 1, pp. 33-40

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