IET Generation, Transmission & Distribution (Aug 2023)

Optimized hybrid YOLOu‐Quasi‐ProtoPNet for insulators classification

  • Stefano Frizzo Stefenon,
  • Gurmail Singh,
  • Bruno José Souza,
  • Roberto Zanetti Freire,
  • Kin‐Choong Yow

DOI
https://doi.org/10.1049/gtd2.12886
Journal volume & issue
Vol. 17, no. 15
pp. 3501 – 3511

Abstract

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Abstract To ensure the electrical power supply, inspections are frequently performed in the power grid. Nowadays, several inspections are conducted considering the use of aerial images since the grids might be in places that are difficult to access. The classification of the insulators' conditions recorded in inspections through computer vision is challenging, as object identification methods can have low performance because they are typically pre‐trained for a generalized task. Here, a hybrid method called YOLOu‐Quasi‐ProtoPNet is proposed for the detection and classification of failed insulators. This model is trained from scratch, using a personalized ultra‐large version of YOLOv5 for insulator detection and the optimized Quasi‐ProtoPNet model for classification. For the optimization of the Quasi‐ProtoPNet structure, the backbones VGG‐16, VGG‐19, ResNet‐34, ResNet‐152, DenseNet‐121, and DenseNet‐161 are evaluated. The F1‐score of 0.95165 was achieved using the proposed approach (based on DenseNet‐161) which outperforms models of the same class such as the Semi‐ProtoPNet, Ps‐ProtoPNet, Gen‐ProtoPNet, NP‐ProtoPNet, and the standard ProtoPNet for the classification task.

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