TY - GEN
T1 - Algorithm for Detecting Hidden Hazards of Crane Hook Safety Latch Based on Cascade Network
AU - Junying, Fan
AU - Lei, Li
AU - Mingming, Wang
AU - Ran, Zhao
AU - Junlin, Du
AU - Fangji, Gan
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - In order to carry out all-weather intelligent monitoring of whether the safety buckle status of crane hooks at construction sites is regulated, a cascading positioning and classification dual network detection algorithm combining traditional image optimisation and deep learning is proposed. Among them, the image optimization algorithm improves the detection ability of the model at night through adaptive cropping of the grey scale histogram values of the bright part of the image and dark area enhancement; the localisation module takes YOLOv7 as the main body, reduces the number of parameters of the model by replacing its backbone network with the lightweight EfficientNet B3, then introduces the CBAM attention mechanism to increase the localisation accuracy of the crane hook area. The loss function is replaced with SIoU that takes the angle factor into account to improve the convergence performance of the model; the classification module consists of the lightweight EfficientNet V2 network combined with the CA attention mechanism. In order to verify the reliability and superiority of the algorithm, a series of comparison experiments are conducted on a homemade construction site dataset. The results show that: the localisation model can reach 97.2% precision rate, with an inference time of 17.4ms, and also has good detection ability at night; the classification model achieves an overall precision and recall rate of 99.1% and 98.9%, with an inference time of only 8.1ms. It is thus evident that the overall structure of the lightweight cascaded dual network combined with the traditional image optimisation algorithm can achieve a good balance of detection precision and speed, while it can realise more efficient and accurate realtime online detection of hook safety buckle status in daytime, evening and nighttime conditions.
AB - In order to carry out all-weather intelligent monitoring of whether the safety buckle status of crane hooks at construction sites is regulated, a cascading positioning and classification dual network detection algorithm combining traditional image optimisation and deep learning is proposed. Among them, the image optimization algorithm improves the detection ability of the model at night through adaptive cropping of the grey scale histogram values of the bright part of the image and dark area enhancement; the localisation module takes YOLOv7 as the main body, reduces the number of parameters of the model by replacing its backbone network with the lightweight EfficientNet B3, then introduces the CBAM attention mechanism to increase the localisation accuracy of the crane hook area. The loss function is replaced with SIoU that takes the angle factor into account to improve the convergence performance of the model; the classification module consists of the lightweight EfficientNet V2 network combined with the CA attention mechanism. In order to verify the reliability and superiority of the algorithm, a series of comparison experiments are conducted on a homemade construction site dataset. The results show that: the localisation model can reach 97.2% precision rate, with an inference time of 17.4ms, and also has good detection ability at night; the classification model achieves an overall precision and recall rate of 99.1% and 98.9%, with an inference time of only 8.1ms. It is thus evident that the overall structure of the lightweight cascaded dual network combined with the traditional image optimisation algorithm can achieve a good balance of detection precision and speed, while it can realise more efficient and accurate realtime online detection of hook safety buckle status in daytime, evening and nighttime conditions.
KW - attention mechanism
KW - cascaded dual network
KW - EfficientNetV2
KW - hook safety buckle
KW - YOLOv7
UR - https://www.scopus.com/pages/publications/85195910519
U2 - 10.1109/ICCECT60629.2024.10545704
DO - 10.1109/ICCECT60629.2024.10545704
M3 - 会议稿件
AN - SCOPUS:85195910519
T3 - 2024 IEEE 2nd International Conference on Control, Electronics and Computer Technology, ICCECT 2024
SP - 1098
EP - 1105
BT - 2024 IEEE 2nd International Conference on Control, Electronics and Computer Technology, ICCECT 2024
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2nd IEEE International Conference on Control, Electronics and Computer Technology, ICCECT 2024
Y2 - 26 April 2024 through 28 April 2024
ER -