Lightweight and efficient Sri Lankan traffic sign detection using pruned and quantized YOLOv12-N

dc.contributor.authorSumaiya, M.M.
dc.contributor.authorWeerasinghe, W.G. K.D.
dc.contributor.authorArthanayake, D.D.A.
dc.date.accessioned2025-11-05T17:47:52Z
dc.date.available2025-11-05T17:47:52Z
dc.date.issued2025-11-07
dc.description.abstractTraffic signs play a crucial role as a universal visual language in ensuring road safety, and neglecting or missing them can significantly contribute to accidents. To address this challenge, Traffic Sign Detection and Recognition (TSDR) has become a key feature in Advanced Driver Assistance Systems (ADAS). This study presents an optimised lightweight deep learning model for real-time traffic sign detection, specifically tailored for Sri Lankan traffic signs and traffic lights, with deployment potential in low-computational environments such as edge devices and embedded systems. Three model variants, YOLOv8n, YOLOv11n and YOLOv12-N, were trained on the dataset using the Ultralytics framework. The YOLOv12-N model was selected as the base model for its optimal balance between detection accuracy and computational efficiency. Structured pruning and post-training quantisation, two key model compression techniques, were then applied for optimisation. The computational cost (FLOPs) was reduced by 50% through L1-norm-based channel sparsity pruning, while maintaining critical validation metrics such as mean average precision at IoU 0.5 (MAP: 83.53%), precision (86.23%), and F1-score (81.31%). Dynamic quantisation further reduced the model size by 70.64%, with the final quantised model retaining strong detection capability (MAP: 78.38%, F1-score: 75.96%). The results confirm that YOLOv12-N can be effectively compressed and deployed without significant accuracy loss. This demonstrates the potential of combining pruning and quantisation to develop an efficient real-time traffic sign detection system suitable for low-computation platforms. Future integration into ADAS could enhance road safety, while applications in driver behaviour monitoring tools could support adherence to traffic regulations.
dc.identifier.citationProceedings of the Postgraduate Institute of Science Research Congress (RESCON)-2025, University of Peradeniya,p94
dc.identifier.issn3051-4622
dc.identifier.urihttps://ir.lib.pdn.ac.lk/handle/20.500.14444/5994
dc.language.isoen
dc.publisherPostgraduate Institute of Science (PGIS), University of Peradeniya, Sri Lanka
dc.relation.ispartofseriesVolume 12
dc.subjectLightweight
dc.subjectModel pruning
dc.subjectPost-training quantization
dc.subjectTraffic sign detection and recognition
dc.subjectYOLOv12-N
dc.titleLightweight and efficient Sri Lankan traffic sign detection using pruned and quantized YOLOv12-N
dc.typeArticle

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