Country-specific Ensemble Learning: A Deep Learning Approach for Road Damage Detection.

Maitry Bhavsar,Abdullah Alfarrarjeh, Utkarsh Baranwal,Seon Ho Kim

Big Data(2022)

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摘要
Automated monitoring systems have been utilized for effective road maintenance in order to eliminate time-consuming and manual inspection by road administration employees. Image-based technology has grown as an important option since a variety of images, such as from surveillance cameras or on-dash cameras, are widely obtainable. Towards that solution, this paper introduces a deep learning-based approach for detecting and classifying road damages in diverse images collected from different countries. Our approach integrates individual models trained per country and a general model trained for all countries. Our approach were evaluated thoroughly using the 2022 IEEE BigData Crowdsensing-based Road Damage Detection Challenge (CRDDC) Datasets. Experimental results show that our approach achieved an F1 score of up to 0.73.
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关键词
Deep Learning,Road Damage Detection and Classification,Object Detection,Ensemble Learning,Image Analysis
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