Pavement Fatigue Crack Detection and Severity Classification Based on Convolutional Neural Network
Zhen Wang, Dylan G. Ildefonzo, Linbing Wang

TL;DR
This paper presents a deep convolutional neural network that accurately detects and classifies the severity of pavement fatigue cracks using a large, labeled image dataset, outperforming existing methods.
Contribution
The study introduces a novel four-layer CNN for pavement crack detection and severity classification, trained on a sizable dataset with high accuracy after limited epochs.
Findings
Achieved 96.23% accuracy in crack detection
Achieved 96.74% accuracy in severity classification
Model outperforms existing methods in accuracy
Abstract
Due to the varying intensity of pavement cracks, the complexity of topological structure, and the noise of texture background, image classification for asphalt pavement cracking has proven to be a challenging problem. Fatigue cracking, also known as alligator cracking, is one of the common distresses of asphalt pavement. It is thus important to detect and monitor the condition of alligator cracking on roadway pavements. Most research in this area has typically focused on pixel-level detection of cracking using limited datasets. A novel deep convolutional neural network that can achieve two objectives is proposed. The first objective of the proposed neural network is to classify presence of fatigue cracking based on pavement surface images. The second objective is to classify the fatigue cracking severity level based on the Distress Identification Manual (DIM) standard. In this paper, a…
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