TY - JOUR
T1 - Loss function inversion for improved crack segmentation in steel bridges using a CNN framework
AU - Kompanets, Andrii
AU - Duits, Remco
AU - Pai, Gautam
AU - Leonetti, Davide
AU - Snijder, H.H.
N1 - Publisher Copyright: © 2024 The Authors
M1 - 105896
PY - 2025/2
Y1 - 2025/2
N2 - Automating bridge visual inspection using deep learning algorithms for crack detection in images is a prominent way to make these inspections more effective. This paper addresses several challenges associated with crack detection: (1) data imbalance, caused by a small crack area as compared to the background, and (2) a high false positive rate, due to a large amount of crack-like features in the background. First, a new benchmark dataset is presented, containing images of cracks in steel bridges along with pixel-wise annotations. Secondly, the importance of incorporating background patches is examined to assess their impact on network performance when applied to high resolution images of cracks in steel bridges. Finally, a loss function is introduced that enables the use of a relatively large number of background patches in neural network training. The proposed approaches yield a significant reduction in false positive rates, thereby improving the overall performance of crack segmentation.
AB - Automating bridge visual inspection using deep learning algorithms for crack detection in images is a prominent way to make these inspections more effective. This paper addresses several challenges associated with crack detection: (1) data imbalance, caused by a small crack area as compared to the background, and (2) a high false positive rate, due to a large amount of crack-like features in the background. First, a new benchmark dataset is presented, containing images of cracks in steel bridges along with pixel-wise annotations. Secondly, the importance of incorporating background patches is examined to assess their impact on network performance when applied to high resolution images of cracks in steel bridges. Finally, a loss function is introduced that enables the use of a relatively large number of background patches in neural network training. The proposed approaches yield a significant reduction in false positive rates, thereby improving the overall performance of crack segmentation.
KW - Computer vision
KW - Crack in steel bridge dataset
KW - Fatigue crack segmentation
KW - Loss function
KW - Steel bridge inspection
UR - http://www.scopus.com/inward/record.url?scp=85211039944&partnerID=8YFLogxK
U2 - 10.1016/j.autcon.2024.105896
DO - 10.1016/j.autcon.2024.105896
M3 - Article
SN - 0926-5805
VL - 170
JO - Automation in construction
JF - Automation in construction
M1 - 105896
ER -