Image preprocessing and detection technology for multiple fault types of
insulators in transmission lines
Abstract
Insulators play a vital role in transmission lines, and their defect
detection using drone inspection technology can be adversely affected by
complex environments, including influence of complex lighting, complex
background and complex defects. To address the issue of complex lighting
first, this paper innovatively designs an adversarial network based on
the decomposition and fusion of structure and brightness layers. This
network is further enhanced with a brightness balance loss strategy to
improve imaging of insulators and their defects in overexposed and
underexposed scenarios, resulting in an average PSNR improvement of 0.4
and an SSIM increase of 0.29.Next, to tackle the problem of complex
backgrounds, an axial attention feature extraction backbone is designed,
considering the distribution characteristics of insulators and their
defects, to extract targets from complex backgrounds. Finally, for the
multi-scale defect target in complex defects, we propose the Res-PANet,
a feature fusion structure based on multi-scale residual connections,
which enhances the network’s detection accuracy in scenarios with
multiple targets. Experimental results demonstrate that the detection
model, after preprocessing for complex lighting conditions, achieves
higher detection accuracy, with an average precision of 89.93%. This
underscores the model’s strong practical value for engineering
applications.