研究目的
The objective of this study is to establish an advanced vision-based method that can robustly detect true fatigue cracks from non-crack edges in a low contrast metallic surface.
研究成果
The proposed vision-based non-contact fatigue crack detection methodology based on image overlapping can successfully detect fatigue cracks from other non-crack edges, showing great potential and flexibility for field implementation under unknown fatigue loads.
研究不足
The approach requires collecting two input images of the monitored structure without any obstructions and under repetitive fatigue load cycles. The two input images should share somewhat similar perspectives and lighting conditions. Detecting a fatigue crack with openings less than 0.016 mm is not investigated.
1:Experimental Design and Method Selection:
The study proposes a vision-based non-contact approach to detect fatigue cracks through image overlapping, treating crack breathing behavior as a robust indicator for crack identification.
2:Sample Selection and Data Sources:
Two laboratory setups including a small-scale steel compact specimen and a large-scale bridge to cross-frame connection specimen are used.
3:List of Experimental Equipment and Materials:
A consumer-grade digital camera (Nikon D7100 with a Sigma 17–50 mm lens) is used for image acquisitions.
4:Experimental Procedures and Operational Workflow:
Two input images are collected under different fatigue loads, followed by image registration and processing to identify fatigue cracks.
5:Data Analysis Methods:
The differential image features provoked by a breathing crack are extracted, enhanced, and visualized through a series of image processing techniques.
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