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IntelligentBuildingSafetyMonitoringSystem BasedonEdgeComputing

  

  1. (a.FacultyofArchitecturalEngineering;b.DivisionofStudentAffairs,KunmingMetallurgyCollege,Kunming650033,China)
  • Received:2024-03-18 Online:2024-08-08 Published:2025-07-08

Abstract: Abstract:Thisstudyaimstoexploreanintelligentbuildingsafetymonitoringsystembasedonedgecom
putingtoaddressthechallengesofintelligentbuildingsafetymonitoring.Firstly,theneedsandchallen
gesofintelligentbuildingsafetymonitoringwereanalyzed,establishingthepurposeofthisstudy.Second
ly,amonitoringsystemarchitecturebasedonedgecomputingwasdesigned,utilizingYoloandSlowFast
modelstoimplementfunctionssuchasfacerecognition,targetdetection,poserecognition,andbehavior
detection.Subsequently,thesystemsperformancewasevaluatedthroughexperimentaltestingontheUCF
-101dataset.TheresultsshowthatposerecognitionandbehaviordetectionbasedontheSlowFastmodel
performwellintermsofaccuracy,recall,andF1score,demonstratingthesystemseffectivenessandre
liability.Theconclusionindicatesthattheintelligentbuildingsafetymonitoringsystem basedonedge
computingproposedinthisstudyeffectivelyaddressestheproblemofintelligentbuildingsafetymonito
ring,providingreliabletechnicalsupportforbuildingsafetymanagement.Inthefuture,algorithmsand
systemarchitecturecanbefurtheroptimizedtoenhancesystemperformanceandreliability,meetingthe
growingdemandforbuildingsafetymanagement

Key words: edgecomputing, videosurveillance, Yolomodel, SlowFastmodel

CLC Number: