Publication | Closed Access
A Deep Learning Model for Small-size Defective Components Detection in Power Transmission Tower
33
Citations
26
References
2021
Year
Fault DiagnosisConvolutional Neural NetworkEngineeringMachine LearningFault ForecastingDeep Learning ModelTransmission TowerContext InformationImage ClassificationReliability EngineeringImage AnalysisData SciencePattern RecognitionFault AnalysisElectrical EngineeringMachine VisionFeature LearningObject DetectionComputer EngineeringPower Transmission TowerComputer ScienceDeep LearningAutomatic Fault DetectionComputer VisionDeep Neural NetworksObject RecognitionContext Information FusionFault Detection
Unmanned Aerial Vehicle (UAV) inspection has gradually replaced manual inspection of transmission tower, which produces many images. While it is laborious and time-consuming to manually analyze these images, there are also challenges in automatically detecting small-size defective components such as bolts in transmission tower images, due to problems including complex background, small size, and many similar objects of bolts. In this paper, by virtue of multi-scale features and context information, we propose a deep neural network named Camp-Net (Context Information and Multi-Scale Pyramid Network) to identify bolts defect in transmission tower images. First, multi-scale feature fusion combines deep features and shallow features in convolutional networks to detect small-size bolts. Second, context information fusion puts the information around bolts into the detection network to remove the disturbance of complex background and similar objects. An image dataset containing defective bolts and normal bolts is constructed for model training and testing. Experimental results show that bolts with loose pins and bolts without pins among fittings in transmission tower can be accurately identified with the proposed model. The Average Precision (AP) of defective bolts detection of this model can be 11.4% higher than that of the commonly used high performance model, Faster R-CNN.
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