免费看大片a-亚洲精品中文字幕乱码三区91-久久久在线视频-中文字幕免费高清在线观看-狼人狠狠干-www婷婷-欧美第一视频-国产中文字字幕乱码无限-色呦呦在线播放-男女羞羞无遮挡-成人男女视频-久久传媒-久久草精品-久久久精品综合-国产免费二区-四虎影院一区二区-国产操人-操操操爽爽爽-色就是色网站-久久77777-神马伦理影视-91手机在线看片-黄视频国产-中文字幕第100页-视频免费1区二区三区

Suzhou Electric Appliance Research Institute
期刊號(hào): CN32-1800/TM| ISSN1007-3175

Article retrieval

文章檢索

首頁 >> 文章檢索 >> 往年索引

用于電力設(shè)備異常診斷的圖像配準(zhǔn)及融合方法

來源:電工電氣發(fā)布時(shí)間:2024-12-02 08:02 瀏覽次數(shù):317

用于電力設(shè)備異常診斷的圖像配準(zhǔn)及融合方法

周喜紅1,席亞賓1,李中寶2
(1 廣東粵電大亞灣綜合能源有限公司,廣東 惠州 516000;
2 中國核工業(yè)二三建設(shè)有限公司,北京 101300)
 
    摘 要:近年來圖像融合方法在電力設(shè)備熱異常的診斷中所占比重逐漸增加,但是涉及到圖像配準(zhǔn)和融合統(tǒng)一考慮的方法很少。提出了一種最大迭代關(guān)聯(lián)圖像配準(zhǔn)及區(qū)域特性判別的圖像融合方法,用于輔助熱異常的診斷。該方法通過構(gòu)建約束函數(shù)計(jì)算源圖像配準(zhǔn)迭代次數(shù),隸屬度函數(shù)定義源圖像的區(qū)域特性,已知區(qū)域特性的子圖像根據(jù)電力設(shè)備熱異常所重視的特征優(yōu)先選擇融合策略,以最大程度保留源圖像中的紋理特征和熱輻射特征。在自建的電力設(shè)備數(shù)據(jù)集上與其他方法對(duì)比顯示,所提方法在保證源圖像配準(zhǔn)精度的前提下,還突出了紅外圖像的熱輻射特征和可見光圖像的紋理特征,能夠滿足電力設(shè)備熱異常診斷的需要。
    關(guān)鍵詞: 圖像融合;圖像配準(zhǔn);電力設(shè)備;熱異常診斷;約束函數(shù);隸屬度函數(shù);熱輻射
    中圖分類號(hào):TM711 ;TP391     文獻(xiàn)標(biāo)識(shí)碼:B     文章編號(hào):1007-3175(2024)11-0067-10
 
Image Registration and Fusion Method for Anomaly
Diagnosis of Power Equipment
 
ZHOU Xi-hong1, XI Ya-bin1, LI Zhong-bao2
(1 Guangdong Yuedian Daya Bay Integrated Energy Co., Ltd, Huizhou 516000, China;
2 China Nuclear Industry 23 Construction Co., Ltd, Beijing 101300, China)
 
    Abstract: In recent years, the proportion of image fusion methods in the diagnosis of thermal anomalies of power equipment has gradually increased, but the methods involving unified consideration of image registration and fusion are rare. Therefore, this paper proposes an image fusion method based on maximum iterative correlation image registration and regional feature discrimination, which is used to assist thermal anomaly diagnosis. This method calculates the number of source image registration iterations by constructing a constraint function, and the membership function defines the regional characteristics of the source image. The sub-images with known regional characteristics preferentially select the fusion strategy according to the characteristics that the thermal anomaly of the power equipment attaches importance to, so as to retain the texture features and thermal radiation features in the source image to the greatest extent. Compared with other methods on the self-built power equipment dataset, the proposed method not only ensures the registration accuracy of the source image, but also highlights the thermal radiation characteristics of the infrared image and the texture characteristics of the visible image, which can meet the needs of thermal anomaly diagnosis of power equipment.
    Key words: image fusion; image registration; power equipment; thermal anomaly diagnosis; constraint function; membership function;thermal radiation
 
參考文獻(xiàn)
[1] CHEN Xiaolong, WANG Peihong, HAO Yongsheng, et al.Evidential KNN-Based Condition Monitoring and Early Warning Method with Applications in Power Plant[J].Neurocomputing,2018,315 :18-32.
[2] HUANG Z, XIE W, LIU W, et al.TSCDNet +: A Highly Robust Substation Anomaly Detection Method[J].Optik,2021,246 :167808.
[3] NAN L D, RUI H, QIANG L, et al.Research on Fuzzy Enhancement Algorithms for Infrared Image Recognition Quality of Power Internet of Things Equipment Based on Membership Function[J].Journal of Visual Communication & Image Representation,2019,62 :359-367.
[4] ZOU H, HUANG F.A Novel Intelligent Fault Diagnosis Method for Electrical Equipment Using Infrared Thermography[J].Infrared Physics & Technology,2015,73 :29-35.
[5] 魯曉涵,李洋,邰昱博,等. 基于 GAN 輕量化改進(jìn)的紅外與可見光圖像融合算法[J] . 電光與控制,2024,31(8) :58-62.
[6] 馮新文,劉璟明,朱呂甫. 基于 MSR 和 BCI 的變電站巡檢圖像融合方法[J] . 電力信息與通信技術(shù),2022,20(4) :94-101.
[7] 陰錫君,劉郁,王一珺. 圖像融合技術(shù)在變電站設(shè)備熱故障監(jiān)測(cè)中的應(yīng)用研究[J] . 科技通報(bào),2019,35(12) :121-124.
[8] JIANG Qian, LIU Yadong, YAN Yingjie, et al.A Contour Angle Orientation for Power Equipment Infrared and Visible Image Registration[J].IEEE Transactions on Power Delivery,2020,36(4) :2559-2569.
[9] LU Mingshu, LIU Haiting, YUAN Xipeng.Thermal Fault Diagnosis of Electrical Equipment in Substations Based on Image Fusion[J]. Traitement Du :Signal Imageparole,2021,38(4) :1095-1102.
[10] 李健,王濱海,李麗,等. 基于 SIFT 的電力設(shè)備紅外與可見光圖像的配準(zhǔn)和融合[J] . 光學(xué)與光電技術(shù),2012,10(1) :75-78.
[11] XU Han, MA Jiayi, YUAN Jiteng, et al.RFNet:Unsupervised Network for Mutually Reinforcing Multi-Modal Image Registration and Fusion[C]//Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition(CVPR),2022.
[12] ZHU Qidan, JING Liqiu, BI Rongsheng.Exploration and Improvement of Ostu Threshold Segmentation Algorithm [C]//The 8th World Congress on Intelligent Control and Automation, 2010.
[13] JING Zhongliang.Image Fusion Based on an Expectation Maximization Algorithm[J].Optical Engineering,2005,44(7) :077001.
[14] PALSSON F, SVEINSSON J R, ULFARSSON M O,et al . Model-Based Fusion of Multi-and Hyperspectral Images Using PCA and Wavelets[J].IEEE Transactions on Geoscience & Remote Sensing,2015,53(5) :2652-2663.
[15] SHEN R, CHENG I, BASU A.Cross-Scale Coefficient Selection for Volumetric Medical Image Fusion[J].IEEE Transactions on BiomedicalEngineering,2012,60(4) :1069-1079.
[16] JAGER F, HORNEGGER J.Nonrigid Registration of Joint Histograms for Intensity Standardization in Magnetic Resonance Imaging [J] . IEEE Transactions on Medical Imaging,2008,28(1) :137-150.
[17] GONCALVES H, CORTE-REAL L, GONCALVES J A.Automatic Image Registration Through Image Segmentation and SIFT[J].IEEE Transactions on Geoscience and Remote Sensing,2011,49(7) :2589-2600.
[18] BAY H, ESS A, TUYTELAARS T, et al.Speeded-Up Robust Features(SURF)[J].Computer Vision & Image Understanding,2008,110(3) :346-359.
[19] LI Shutao, KANG Xudong, HU Jianwen.Image Fusion with Guided Filtering[J].IEEE Transactions on Image Processing,2013,22(7) :2864-2875.
[20] MA J Y, CHEN C, LI C, et al.Infrared and Visible Image Fusion Via Gradient Transfer and Total Variation Minimization[J].Information Fusion,2016,31 :100-109.
[21] BAVIRISETTI D P, XIAO G, LIU G.Multi-Sensor Image Fusion Based on Fourth Order Partial Differential Equations[C]//2017 20th International Conference on Information Fusion,2017.
[22] YAN Lei, CAO Jie, RIZVI Saad, et al.Improving the Performance of Image Fusion Based on Visual Saliency Weight Map Combined with CNN[J].IEEE Access,2020,8 :59976-59986.
[23] XU Han, MA Jiayi, JIANG Junjun, et al.U2Fusion:A Unified Unsupervised Image Fusion Network[J].IEEE Transactions on Pattern Analysis and Machine Intelligence,2022,44(1) :502-518.
[24] MA Jiayi, XU Han, JIANG Junjun, et al.DDcGAN:A Dual-Discriminator Conditional Generative Adversarial Network for Multi-Resolution Image Fusion[J].IEEE Transactions on Image Processing,2020,29 :4980-4995.
[25] MA Jiayi, ZHANG Hao, SHAO Zhenfeng, et al.GANMcC:A Generative Adversarial Network with Multiclassification Constraints for Infrared and Visible Image Fusion[J].IEEE Transactions on Instrumentation and Measurement,2020,70 :5005014.
[26] MA Jiayi, TANG Linfeng, XU Meilong, et al.STDFusionNet:An Infrared and Visible Image Fusion Network Based on Salient Target Detection[J].IEEE Transactions on Instrumentation and Measurement,2021,70 :5009513.
[27] SENGUPTA D, GUPTA P, BISWAS A.A Survey on Mutual Information Based Medical Image Registration Algorithms[J].Neurocomputing,2021,486 :174-188.
[28] ROBERTS J W, AARDT J V, AHMED F.Assessment of Image Fusion Procedures Using Entropy, Image Quality, and Multispectral Classification[J].Journal of Applied Remote Sensing,2008,2(1) :1-28.
[29] WANG E , YANG B , PANG L . Superpixel-Based Structural Similarity Metric for Image Fusion Quality Evaluation[J].Sensing and Imaging,2021,22(1) :1-25.
[30] XYDEAS C S , PV V . Objective Image Fusion Performance Measure[J].Military Technical Courier,2000,56(4) :181-193.
[31] ESKICIOGLU A M, FISHER P S.Image Quality Measures and Their Performance [J] . IEEE Transactions on Communications,1995,43(12) :2959-2965.

 

主站蜘蛛池模板: 久久视频在线 | 中文字幕在线观看一区 | 香蕉久久国产av一区二区 | 国产视频一区二区在线观看 | 国产激情视频在线观看 | 18深夜在线观看免费视频 | 成人在线网站 | 色导航 | 91精彩视频 | 国内精品久久久 | 亚洲天堂一区二区 | 性中国xxx极品hd | 日韩三级在线观看 | av看片| 国产一区二区三区免费播放 | 天天操狠狠操 | 午夜aaa片一区二区专区 | 久久新| 交hdsexvideos娇小 | 中文字幕免费在线观看 | 久久99视频 | 91激情| 日本在线一区二区 | 精品在线一区 | 韩日一级片| 成人短视频在线观看 | 深夜福利网站 | 欧美人与野 | 欧美日韩精品一区二区三区 | 爱爱视频网址 | 亚洲黄色录像 | 911精品国产一区二区在线 | 91香蕉视频在线 | 亚洲午夜精品久久久久久app | 久久精品免费 | 精产国产伦理一二三区 | 日韩国产在线观看 | 日韩一二区 | 山外人精品影院 | 中文字幕视频在线观看 | 一区二区三区日韩 | 国产欧美日韩在线观看 | 黄色激情网站 | 黄色大片免费观看 | 97爱爱| 名校风暴在线观看免费高清完整 | 麻豆国产在线 | 尤物在线视频 | 综合另类| 超碰在 | 性中国xxx极品hd | 亚洲中文字幕在线观看 | 国产欧美日韩 | 亚洲欧美日韩另类 | 无码一区二区三区在线 | 91嫩草欧美久久久九九九 | 日日av| 国产精品资源 | 免费爱爱视频 | 男女视频在线观看 | 最新av在线 | 欧美a√| 久久久精品一区 | 日韩人妻一区二区三区 | 日韩电影一区二区三区 | 天堂在线观看 | 人人妻人人澡人人爽久久av | 男男大尺度 | 91在线免费观看网站 | 伊人青青草 | 干日本少妇| 在线色 | 中文在线视频 | 青青在线视频 | 免费看裸体网站 | 日日夜夜av | 欧美激情一区二区 | 黄色精品 | 青青草av| 亚洲在线免费观看 | 在线观看国产免费视频 | 蜜臀久久99精品久久久久久宅男 | 久在线| 污视频在线免费观看 | 男人天堂2024 | 国产熟妇另类久久久久 | 久久人人爽人人爽人人片 | 亚洲xxxxx | 国产va| av网站免费看| 先锋av资源 | 成人羞羞国产免费图片 | 国产精品久久久 | 成人a级片 | www.香蕉视频 | 午夜视频免费观看 | 亚洲成人av在线 | 麻豆精品久久久久久久99蜜桃 | 国产高清在线视频 |