Image recognition method for secondary circuit terminal based on contrastive learning and improved CRNN
Assignee
Sanmen Nuclear Power Co., Ltd.
Inventors
Qiuyang Lin, Congwei Wang, Luyi Zhang, Jiaqi Liu
Abstract
The present disclosure belongs to the technical field of health status assessment of secondary circuits in power systems, and specifically relates to an image recognition method for a secondary circuit terminal based on contrastive learning and an improved CRNN. The method includes: step 1: pre-training sample data of a secondary circuit terminal block of a power system through the contrastive learning; step 2: improving a feature extraction layer of a CRNN by using a residual neural network; and step 3: introducing an ECA-Net on the basis of the step 2 to construct a recognition model for the secondary circuit terminal based on the contrastive learning and the improved CRNN. In the method of the present disclosure, an image of the secondary circuit terminal block can be accurately recognized, and the accuracy of image recognition, detection accuracy and detection efficiency can be greatly improved.
CPC Classifications
Filing Date
2025-08-18
Application No.
19303043
Claims
11