Skip to main navigation Skip to search Skip to main content

Edge deployable lightweight framework for real-time driver safety system with integrated lane departure and traffic sign recognition

  • Hassaan Ali Qureshi
  • , Danish Hussain*
  • , Ali Hassan*
  • , Aon Safdar
  • , Anas Bin Aqeel
  • , Muhammad Rafique
  • , Zohaib Riaz
  • , Farhan Hussain
  • *Corresponding author for this work
  • National University of Sciences and Technology Pakistan
  • University College Dublin

Research output: Contribution to journalArticlepeer-review

Abstract

Lane departure and traffic-sign negligence are leading contributors to road accidents, particularly in regions with non-standardized signage and limited annotated data. Existing Advanced Driver Assistance Systems (ADAS) solutions are often developed as disjointed submodules, are rarely validated for real-time operation, and struggle to balance accuracy with low-latency inference for embedded deployment. We address these gaps with a unified, edge-deployable ADAS framework that simultaneously performs lane-departure warning (LDW) and traffic-sign detection and recognition (TSD/TSR), and validate the proposed system on automotive-class devices. Our framework combines a lightweight, lane-segmentation-driven LDW, which includes a drivable-area fallback for degraded markings, with a two-stage TSD/TSR pipeline consisting of efficient sign localization followed by fine-grained classification, designed to preserve accuracy at embedded latency. To support region-specific deployment under data scarcity, we curate a 35-class local traffic-sign dataset and introduce a generalized augmentation and balancing profile, expanding the corpus from 359 images to 8750 samples. On an NVIDIA Jetson Orin Nano, the integrated system sustains 15 FPS end to end (32 FPS for LDW and 18 FPS for TSD/TSR). The TSD/TSR branch achieves 97.4 mAP for detection and 95.6% validation accuracy (93.1% on a local real-world set) while maintaining an approximately 13.9 M parameter footprint. Relative to recent methods that target a single task or report results only on desktop-class GPUs, our approach delivers both LDW and TSD/TSR with real-time performance on edge hardware, providing a practical pathway to low-cost, field-ready ADAS in resource-constrained settings.

Original languageEnglish
Article number61
JournalMachine Vision and Applications
Volume37
Issue number3
DOIs
StatePublished - May 2026

Keywords

  • Advanced driver assistance systems (ADAS)
  • Edge computing
  • Lane departure warning
  • Real time implementation
  • Traffic sign recognition

Fingerprint

Dive into the research topics of 'Edge deployable lightweight framework for real-time driver safety system with integrated lane departure and traffic sign recognition'. Together they form a unique fingerprint.

Cite this