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Lightweight deep learning for real-time road distress detection on mobile devices

Yuanyuan Hu, Ning Chen, Yue Hou, Xingshi Lin, Baohong Jing, Pengfei Liu

2025Nature Communications29 citationsDOIOpen Access PDF

Abstract

Efficient and accurate road distress detection is crucial for infrastructure maintenance and transportation safety. Traditional manual inspections are labor-intensive and time-consuming, while increasingly popular automated systems often rely on computationally intensive devices, limiting widespread adoption. To address these challenges, this study introduces MobiLiteNet, a lightweight deep learning approach designed for mobile deployment on smartphones and mixed reality systems. Utilizing a diverse dataset collected from Europe and Asia, MobiLiteNet incorporates Efficient Channel Attention to boost model performance, followed by structural refinement, sparse knowledge distillation, structured pruning, and quantization to significantly increase the computational efficiency while preserving high detection accuracy. To validate its effectiveness, MobiLiteNet improves the existing MobileNet model. Test results show that the improved MobileNet outperforms baseline models on mobile devices. With significantly reduced computational costs, this approach enables real-time, scalable, and accurate road distress detection, contributing to more efficient road infrastructure management and intelligent transportation systems.

Topics & Concepts

Computer scienceSoftware deploymentScalabilityDeep learningMobile devicePruningIntelligent transportation systemArtificial intelligenceLimitingReal-time computingMachine learningDistributed computingTransport engineeringBiologyAgronomyDatabaseOperating systemMechanical engineeringEngineeringInfrastructure Maintenance and MonitoringAsphalt Pavement Performance EvaluationConcrete Corrosion and Durability
Lightweight deep learning for real-time road distress detection on mobile devices | Litcius