基于梯度图像融合的接触网绝缘子故障检测

Catenary Insulator Fault Detection Based on Gradient Image Fusion

  • 摘要: 针对单一红外图像或可见光图像不能够实现全天候检测的问题,提出了一种梯度图像融合模型将红外和可见光图像进行融合。先采用加速稳健特征算法(speeded-up robust features,SURF)将两幅图像的特征点进行匹配。接着采样剪切波变换(non-subsampled shearlet transform, NSST)算法将待融合图像进行分解,形成具有高频分量信息和低频分量信息的图,再分别对绝缘子的高频分量图和低频分量图进行融合,实现局部融合。利用NSST的逆变换对高频分量图和低频分量图进行逆变换,得到最终融合图,实现全局融合。对融合图像进行质量评价。采用最小二乘法直线拟合算法在二值图像的基础上来实现绝缘子的自爆检测;采用像素积分投影法来检测绝缘子片裂纹情况;采用颜色特征来检测绝缘子表面是否存在污秽的情况。通过实验对比单张图像和融合图像的检测结果的准确率。实验结果表明,采用基于融合图像的绝缘子自爆、绝缘子片裂纹、绝缘子表面污秽3个故障的识别率分别达到了95%、91%、90%,均高于单一的红外图像或可见光图像的识别率。

     

    Abstract: To accurately identify a single infrared or visible image under all weather conditions, a gradient image fusion model is proposed to fuse infrared and visible images. First, the accelerated up robust features algorithm is used to match the feature points of the two images. Further, the sampled shear wave transform (NSST) algorithm decomposes the image to be fused to form a map with high-frequency and low-frequency component information and then fuses the high-frequency and low-frequency component maps of insulators to achieve local fusion. The high- and low-frequency component maps are inversely transformed by the inverse transform of the NSST to obtain the final fusion map and achieve global fusion. The quality of the fused images is also evaluated. The line fitting algorithm based on the least-squares method is used to detect insulator self-explosions based on a binary image, the pixel integral projection method is used to detect cracks in the insulator, and color features are used to detect whether the insulator surface is polluted. The accuracies of the detection results of a single image and fusion image were compared through experiments. The experimental results show that the recognition rates of insulator self-explosion, insulator cracks, and insulator surface contamination based on fusion images are 95%, 91%, and 90%, respectively, which are higher than the recognition rates of single infrared image or visible image.

     

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