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A Contrast-Enhanced Feature Reconstruction for Fixed PTZ Camera-Based Crack Recognition in Expressways
by
Feng, Xuezhi
, Shao, Chunyan
in
Algorithms
/ Automation
/ Cracks
/ Datasets
/ Efficiency
/ Highway maintenance
/ Image reconstruction
/ Maintenance and repair
/ Maintenance engineering
/ Methods
/ Morphology
/ Neural networks
/ Pixels
/ Roads
/ Roads & highways
/ Surveillance
/ Texture recognition
/ Traffic flow
/ Traffic safety
/ Wavelet transforms
2025
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A Contrast-Enhanced Feature Reconstruction for Fixed PTZ Camera-Based Crack Recognition in Expressways
by
Feng, Xuezhi
, Shao, Chunyan
in
Algorithms
/ Automation
/ Cracks
/ Datasets
/ Efficiency
/ Highway maintenance
/ Image reconstruction
/ Maintenance and repair
/ Maintenance engineering
/ Methods
/ Morphology
/ Neural networks
/ Pixels
/ Roads
/ Roads & highways
/ Surveillance
/ Texture recognition
/ Traffic flow
/ Traffic safety
/ Wavelet transforms
2025
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Do you wish to request the book?
A Contrast-Enhanced Feature Reconstruction for Fixed PTZ Camera-Based Crack Recognition in Expressways
by
Feng, Xuezhi
, Shao, Chunyan
in
Algorithms
/ Automation
/ Cracks
/ Datasets
/ Efficiency
/ Highway maintenance
/ Image reconstruction
/ Maintenance and repair
/ Maintenance engineering
/ Methods
/ Morphology
/ Neural networks
/ Pixels
/ Roads
/ Roads & highways
/ Surveillance
/ Texture recognition
/ Traffic flow
/ Traffic safety
/ Wavelet transforms
2025
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A Contrast-Enhanced Feature Reconstruction for Fixed PTZ Camera-Based Crack Recognition in Expressways
Journal Article
A Contrast-Enhanced Feature Reconstruction for Fixed PTZ Camera-Based Crack Recognition in Expressways
2025
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Overview
Efficient and accurate recognition of highway pavement cracks is crucial for the timely maintenance and long-term use of expressways. Among the existing crack acquisition methods, human-based approaches are inefficient, whereas carrier-based automated methods are expensive. Additionally, both methods present challenges related to traffic obstruction and safety risks. To address these challenges, we propose a fixed pan-tilt-zoom (PTZ) vision-based highway pavement crack recognition workflow. Pavement cracks often exhibit complex textures with blurred boundaries, low contrast, and discontinuous pixels, leading to missed and false detection. To mitigate these issues, we introduce an algorithm named contrast-enhanced feature reconstruction (CEFR), which consists of three parts: comparison-based pixel transformation, nonlinear stretching, and generating a saliency map. CEFR is an image pre-processing algorithm that enhances crack edges and establishes uniform inner-crack characteristics, thereby increasing the contrast between cracks and the background. Extensive experiments demonstrate that CEFR improves recognition performance, yielding increases of 3.1% in F1-score, 2.6% in mAP@0.5, and 4.6% in mAP@0.5:0.95, compared with the dataset without CEFR. The effectiveness and generalisability of CEFR are validated across multiple models, datasets, and tasks, confirming its applicability for highway maintenance engineering.
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