TY - JOUR
T1 - An intelligent hybrid YOLO–CNN–LSTM framework for real-time road infrastructure monitoring and analysis
AU - Zhumadillayeva, Ainur
AU - Ahanger, Tariq Ahamed
AU - Matkarimov, Bakhyt
N1 - Publisher Copyright:
© 2025 Elsevier Ltd
PY - 2026/1/30
Y1 - 2026/1/30
N2 - Deep learning has shown great potential for intelligent road infrastructure management, yet accurate and scalable assessment remains challenging due to the limitations of manual inspection and single-modality approaches. To address these issues, this study presents a hybrid framework that integrates multimodal IoT sensing, Digital Twin (DT) modeling, and a hybrid YOLO, CNN, BiLSTM architecture for real-time pavement monitoring and severity prediction. The framework leverages heterogeneous sensor data and DT simulations to provide context-aware anomaly detection, focusing on cracks, potholes, faded markings, and snow-covered surfaces. By combining spatial and temporal feature learning, the system enables both immediate detection and predictive assessment of deterioration trends. Experimental validation confirms its superior performance over state-of-the-art models, achieving high temporal efficiency (11.02 ms), robust detection accuracy (Precision = 96.26%, Sensitivity = 95.52%, Specificity = 95.73%, F-Measure = 96.25%), and low prediction error (0.21 ±0.01). Overall, the proposed framework offers a reliable, scalable, and proactive solution for intelligent road infrastructure monitoring and maintenance.
AB - Deep learning has shown great potential for intelligent road infrastructure management, yet accurate and scalable assessment remains challenging due to the limitations of manual inspection and single-modality approaches. To address these issues, this study presents a hybrid framework that integrates multimodal IoT sensing, Digital Twin (DT) modeling, and a hybrid YOLO, CNN, BiLSTM architecture for real-time pavement monitoring and severity prediction. The framework leverages heterogeneous sensor data and DT simulations to provide context-aware anomaly detection, focusing on cracks, potholes, faded markings, and snow-covered surfaces. By combining spatial and temporal feature learning, the system enables both immediate detection and predictive assessment of deterioration trends. Experimental validation confirms its superior performance over state-of-the-art models, achieving high temporal efficiency (11.02 ms), robust detection accuracy (Precision = 96.26%, Sensitivity = 95.52%, Specificity = 95.73%, F-Measure = 96.25%), and low prediction error (0.21 ±0.01). Overall, the proposed framework offers a reliable, scalable, and proactive solution for intelligent road infrastructure monitoring and maintenance.
KW - Artificial intelligence
KW - Prediction
KW - Road monitoring
KW - YOLO
UR - https://www.scopus.com/pages/publications/105020667490
U2 - 10.1016/j.measurement.2025.119561
DO - 10.1016/j.measurement.2025.119561
M3 - Article
AN - SCOPUS:105020667490
SN - 0263-2241
VL - 258
JO - Measurement: Journal of the International Measurement Confederation
JF - Measurement: Journal of the International Measurement Confederation
M1 - 119561
ER -