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A Hybrid CNN/Poisson Fusion Based Power Transformer External Defect Detecting Method

机译:基于CNN /泊松融合的电力变压器外部缺陷检测方法

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The external defects of power transformers always occurs, suffered from external forces, aging and long-term overload operation. With fast development of computer vision, inspection robot is replacing artificial patrol to detect external defects. In this paper, we propose an external defect detection framework for power transformer using a hybrid method of convolutional neural networks (CNNs) and Poisson fusion. Firstly, the YOLOv3 algorithm is introduced to locate and extract the power transformers, where the style transfer method is proposed to stylize the image and thus improve the robustness of the object detection model under image corruptions. Secondly, the improved LeNet-5 algorithm is proposed to detect the rust and oil leakage defects of the power transformer. To reduce the negative impact caused by the lack of defective images, Poisson fusion is introduced to generate defective images to improve the general ability of the defect detection model. Finally, the detection framework is validated with actual power transformer images.
机译:电力变压器的外部缺陷经常发生,受到外力,老化和长期过载操作的影响。随着计算机视觉的快速发展,检查机器人正在取代人工巡逻来检测外部缺陷。在本文中,我们提出了一种使用卷积神经网络(CNN)和Poisson融合的混合方法的电力变压器外部缺陷检测框架。首先,引入YOLOv3算法来定位和提取电力变压器,提出了一种样式转换方法来对图像进行风格化处理,从而提高了对象检测模型在图像损坏下的鲁棒性。其次,提出了改进的LeNet-5算法,以检测电力变压器的锈蚀和漏油缺陷。为了减少由于缺少缺陷图像而造成的负面影响,引入了泊松融合以生成缺陷图像,从而提高了缺陷检测模型的一般能力。最后,利用实际的电力变压器图像对检测框架进行验证。

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