Detection of mobile phone use by labourers on construction sites using yolov11-s

dc.contributor.authorUduwage, DNLS
dc.contributor.authorSivanraj, S
dc.contributor.authorWaidyasekara, KGAS
dc.contributor.authorShiwakoti, RK
dc.contributor.authorTripathi, M
dc.contributor.editorWaidyasekara, KGAS
dc.contributor.editorJayasena, HS
dc.contributor.editorWimalaratne, PLI
dc.contributor.editorTennakoon, GA
dc.date.accessioned2025-09-22T06:09:25Z
dc.date.issued2025
dc.description.abstractMobile phone distractions among construction labourers pose significant productivity challenges. This study presents a YOLOv11-s-based model to detect and classify construction labourers who use mobile phones during work. The system was trained using a person dataset, a helmet dataset and a mobile phone dataset, obtained from an online database and custom images collected from Sri Lankan construction sites. The proposed system followed a four-stage approach, beginning with person detection, followed by helmet detection and classification. Then, through image preprocessing, the model analysed the helmet colour using histogram analysis and the Hue Saturation Value colour scale to detect labourers with yellow helmets. Subsequently, the performance evaluation metrics, such as precision-recall curve, mAP@0.5 and inference time, indicate that the trained model performs better on the testing data in detecting construction labourers who are using mobile phones during work. Finally, mobile phone detection is carried out. Images from Sri Lankan construction sites were used for deployment validation and to check for model overfitting. The system can be further developed by using motion detection through IoT to detect the continuous use of mobile phones through timeframe analysis. This study contributes to improving workplace productivity through the automated detection of distractions in construction.
dc.identifier.conferenceWorld Construction Symposium - 2025
dc.identifier.departmentDepartment of Building Economics
dc.identifier.doihttps://doi.org/10.31705/WCS.2025.42
dc.identifier.emailnuwanthas@uom.lk
dc.identifier.emailsivanrajs.19@uom.lk
dc.identifier.emailanuradha@uom.lk
dc.identifier.emailranju.shiwakoti@ioe.edu.np
dc.identifier.emaild6722300024@g.siit.tu.ac.th
dc.identifier.facultyArchitecture
dc.identifier.issn2362-0919
dc.identifier.pgnospp. 561-574
dc.identifier.placeColombo
dc.identifier.proceeding13th World Construction Symposium - 2025
dc.identifier.urihttps://dl.lib.uom.lk/handle/123/24180
dc.language.isoen
dc.publisherDepartment of Building Economics
dc.subjectConstruction
dc.subjectHelmet Detection
dc.subjectMobile Phone Detection
dc.subjectProductivity
dc.subjectYolov11
dc.titleDetection of mobile phone use by labourers on construction sites using yolov11-s
dc.typeConference-Full-text

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