Two-Stage Quality Assessment Method of Power Equipment X-Ray Image Based on Improved CenterNet

Jing Zhou, Rui-qi Zhang, Kun Hao, Hui-bin Li, Peng Li, Rong-hai Liu, Xinliang Guo, Xin Zheng, Ying-Chun Yang, Hong-wei Xu, Guo-kun Chen, Ke-shun Dai, Zong-han Jiao, Xiaobin Cai
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Abstract

In order to improve the recognition accuracy of X-ray inspection image quality of electric power equipment, also ensure defect detection and recognition algorithm models to obtain high-quality X-ray images, in view of the characteristics of the original X-ray image of power equipment based on twin-wire image quality meter, such as large resolution, relatively small size and compact arrangement of twin-wire pairs, a two-stage X-ray image quality assessment method for power equipment based on improved CenterNet is proposed. Firstly, in the coarse detection stage, the original CenterNet is used to detect the double-wire image quality meter region in the X-ray image. Then, in the fine detection stage, the improved CenterNet is used to detect the number of double-wire pairs in the double-wire image quality meter image. Finally, image quality assessment results are achieved according to the double-wire image quality meter evaluation standard. In order to solve the problems of low resolution and large ratio of long side to short side of double-wire pair, the backbone network structure of CenterNet is optimized and a global attention mechanism is introduced to improve the spatial resolution and representation ability of features. For detection of double-wire pairs, experimental results show that the average precision of the proposed method on the test set can reach 96.18%, and the detection accuracy of double-wire pairs with a detection error of less than 2 is as high as 97.5%, which can achieve the effective quality assessment of power equipment X-ray images.
基于改进CenterNet的电力设备x射线图像两阶段质量评价方法
为了提高电力设备x射线检测图像质量的识别精度,同时保证缺陷检测和识别算法模型能够获得高质量的x射线图像,针对基于双线图像质量计的电力设备原始x射线图像分辨率大、尺寸相对较小、双线对排列紧凑等特点,提出了一种基于改进CenterNet的电力设备x射线图像质量两阶段评价方法。首先,在粗检测阶段,利用原始CenterNet对x射线图像中的双线图像质量计区域进行检测。然后,在精细检测阶段,利用改进的CenterNet对双线图像质量计图像中的双线对数进行检测。最后,根据双线图像质量计评价标准得出图像质量评价结果。为了解决双线对分辨率低、长短比大的问题,对CenterNet骨干网结构进行了优化,引入全局关注机制,提高了特征的空间分辨率和表征能力。对于双线对的检测,实验结果表明,该方法在测试集上的平均精度可达96.18%,检测误差小于2的双线对的检测精度高达97.5%,可实现电力设备x射线图像的有效质量评估。
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