Infrared Image Change Detection of Substation Equipment in Power System Using Markov Random Field

Jipu Gao, Changbao Xu, Li Zhang, Shuaiwei Liu, Weigang Feng, S. Xiong, Shan Tan
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引用次数: 5

Abstract

An infrared image change detection method based on Markov Random Field (MRF) was proposed to estimate the status of substation equipment in the power system. The method classified changed and unchanged regions between bitemporal images using MRF with k-means clustering initializing the label of all pixels of the sample image. The proposed method used the target pixel and its neighborhood information to realize the determination of the category of the target pixel. In our method, the original bi-temporal infrared images were converted to two gray-level images, and one difference image was obtained by subtracting one gray-level image from another, pixel by pixel. Change areas were then detected on the gray-level difference image using inference techniques on MRF. To demonstrate the excellent performance of our method, comparative experiments were made using the other four classical approaches, including Image Differencing, Image Ratioing, Change vector analysis (CVA) and Principal Component Analysis (PCA). In order to quantify the performance of different algorithms for a quantitative comparison, six performance indexes, i.e. Kappa value, Probability of False detection (PF), Probability of Omission detection (PO), Card Similarity Index (CSI), Classification Error (CE) and Area Error (AE) were adopted in this paper. The experimental results showed that compared with the four classical methods, the proposed method can effectively reduce PO and PF, and improve the overall detection accuracy.
基于马尔可夫随机场的电力系统变电设备红外图像变化检测
提出了一种基于马尔可夫随机场(MRF)的红外图像变化检测方法来估计电力系统中变电站设备的状态。该方法使用MRF和k-means聚类初始化样本图像所有像素的标签,对双时间图像之间的变化区域和不变区域进行分类。该方法利用目标像素及其邻域信息来实现目标像素类别的确定。该方法将原始双时相红外图像转换为两幅灰度图像,并逐像素地将一幅灰度图像相减,得到一幅差分图像。然后利用磁共振成像的推理技术在灰度差图像上检测变化区域。为了证明该方法的优异性能,我们还与图像差分、图像比例、变化向量分析(CVA)和主成分分析(PCA)等四种经典方法进行了对比实验。为了量化不同算法的性能,本文采用Kappa值、误检概率(PF)、漏检概率(PO)、卡片相似指数(CSI)、分类误差(CE)和面积误差(AE) 6个性能指标进行定量比较。实验结果表明,与四种经典方法相比,该方法能有效降低PO和PF,提高整体检测精度。
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