Litcius/Paper detail

Image-based Road Pothole Detection using Deep Learning Model

Priyanka Gupta, Manish Dixit

20222022 14th International Conference on Computational Intelligence and Communication Networks (CICN)27 citationsDOI

Abstract

Road pothole detection is essential to ensure any engineering structures' health. Manual pothole detection and classification is very human-intensive work. Several sensor-based techniques, laser imaging approaches, and image processing techniques have been deployed to less the intervention of humans in road inspections. Still, these approaches have some limitations, such as high cost, less accuracy, and risk during detection, as Machine learning-based approaches require manual feature extraction for the prediction. Therefore, this proposed work aims to use deep learning modes for better pothole detection results. Several pothole datasets are available online, and deep learning-based methods require lots of data for the training; therefore, pothole images are collected from the different datasets and combined into one dataset to train the model. Augmentation is also applied to the dataset for better training, as augmentation provides images with different angles, and by fine-tuning the model consequently, records with about 98 % accuracy.

Topics & Concepts

Pothole (geology)Computer scienceArtificial intelligenceDeep learningFeature extractionObject detectionMachine learningFeature engineeringData miningPattern recognition (psychology)GeologyPetrologyInfrastructure Maintenance and MonitoringGeophysical Methods and ApplicationsAsphalt Pavement Performance Evaluation