Abstract

A transmission line is the lifeline of a power system, while bolts play the role of connecting fittings and tightening conductors. However, bolts at different positions have different definitions of defects, which belongs to the problem of visually indistinguishable. Aiming at visually indistinguishable bolt defects in transmission lines, this paper propose an end-to-end visually indistinguishable bolt defects detection method that is based on transmission line knowledge reasoning. Firstly, we use the End-to-end Object Detection with Transformers (DETR) as the basic model and augment it with the dilated encoder module to obtain the multi-scale features of the target. Then we design a transmission line image relative position encoding (TL-iRPE) to infer the bolt position knowledge. Finally, this paper designs a bolt attributes classifier and a bolt defects classifier. By combining the position knowledge and the attributes knowledge to assist bolt defect classifier in reasoning bolt defects, the accuracy of bolt defects detection is further improved. We have constructed the Visually Indistinguishable Bolt Defects Dataset (VIBD Dataset) and carried out experiments on the dataset. We call the bolt defects detection method combining position knowledge and attributes knowledge PA-DETR. Compared with other transmission line bolt defect detection methods, PA-DETR has more advantages in transmission line bolt defect detection.

Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call