|
|
Infrared visible light image fusion in low light scenarios of substations |
ZHAO Jie, CHEN Jiajin |
School of Electrical and Control Engineering, Heilongjiang University of Science and Technology, Harbin 150022 |
|
|
Abstract The image acquisition of substations in low light environments can lead to problems such as low visual quality, loss of details, and low contrast, which in turn affect the subsequent detection and monitoring of equipment. A fusion method based on low light image enhancement and nonsubsampling contourlet transform (NSCT) and discrete cosine transform (DCT) technology is proposed in this paper. Firstly, adaptive image adjustment is performed on visible light images based on gamma parameters to enhance visibility. Then NSCT decomposes the image into high and low frequency coefficients. For high-frequency coefficients, edge information extraction based on Sobel operator is used, and for low-frequency coefficients, improved DCT-DFT is used for decomposition and integration. The decomposed amplitude spectrum and the phase spectrum are fused using contrast enhancement weighting and local energy optimization rule based on singular value decomposition (SVD), respectively. Finally, the fused image is obtained by NSCT inverse transformation. Three sets of images of common equipment in substations are used to compare the proposed method with other algorithms. The results show that this proposed method performs better in indicators such as average gradient, information entropy and mutual information.
|
Received: 18 September 2024
|
|
|
|
[1] KAUR H, KOUNDAL D, KADYAN V.Image fusion techniques: a survey[J].Archives of Computational Methods in Engineering, 2021, 28(7): 4425-4447. [2] 陈昌岩. 基于小波变换的红外与可见光图像融合[J].科学技术创新, 2024(15): 42-45. [3] 王慧赢, 王春平, 付强, 等. 基于图像特征的红外与低照度图像融合[J].系统工程与电子技术, 2023, 45(8): 2395-2404. [4] VENKATESAN B, RAGUPATHY U S, NATARAJAN I.A review on multimodal medical image fusion towards future research[J].Multimedia Tools and Applications, 2023, 82(5): 7361-7382. [5] 丁贵鹏, 陶钢, 李英超, 等. 基于非下采样轮廓波变换与引导滤波器的红外及可见光图像融合[J].兵工学报, 2021, 42(9): 1911-1922. [6] 卢宇飞, 林建新. 基于图像特征筛选与融合网络的电力系统动态稳定评估[J].电气技术, 2023, 24(12): 1-6. [7] 梁新福, 罗日成, 党世轩, 等. 基于数字图像处理的电力线异物识别方法研究[J].电气技术, 2022, 23(2): 73-78. [8] 陆世豪, 祝云, 廖华, 等. 基于图像去雾技术的变电站图像清晰化方法[J].电气技术, 2023, 24(10): 51-56. [9] KAKERDA R K, KUMAR M, MATHUR G, et al.Fuzzy type image fusion using hybrid DCT-FFT based Laplacian pyramid Transform[C]//2015 International Conference on Communications and Signal Processing (ICCSP), Melmaruvathur, India, 2015: 1049-1052. [10] 万裁, 何为, 沈晟, 等. 超低场磁共振膝关节正交接收线圈设计[J].电工技术学报, 2024, 39(7): 1923-1931. [11] 代鹏, 许海山. 基于压缩感知的NSCT图像融合[J].机械制造与自动化, 2021, 50(6): 106-109. [12] LIU Jiahuan, ZHANG Jian, DU Yunfei.A fusion method of multispectral image and panchromatic image based on NSCT transform and adaptive gamma correction[C]//2018 3rd International Conference on Information Systems Engineering (ICISE), Shanghai, China, 2018: 10-15. [13] 赵娅, 成璐璐, 白玉杰, 等. 改进多方向Sobel算子的剩余油边缘检测方法[J].吉林大学学报(信息科学版), 2024, 42(4): 700-709. [14] 张贵仓, 苏金凤, 拓明秀. DTCWT域的红外与可见光图像融合算法[J].计算机工程与科学, 2020, 42(7): 1226-1233. [15] CUI Guangmang, FENG Huajun, XU Zhihai, et al.Detail preserved fusion of visible and infrared images using regional saliency extraction and multi-scale image decomposition[J].Optics Communications, 2015, 341: 199-209. [16] 李敏, 苑贤杰, 骆志丹, 等. 基于改进引导滤波与DCPCNN的图像融合方法[J].计算机工程与应用, 2019, 55(19): 207-213. [17] QU Guihong, ZHANG Dali, YAN Pingfan.Infor- mation measure for performance of image fusion[J].Electronics Letters, 2002, 38(7): 313. [18] VAN AARDT J.Assessment of image fusion pro- cedures using entropy, image quality, and multispectral classification[J].Journal of Applied Remote Sensing, 2008, 2(1): 023522. [19] RAJALINGAM B, PRIYA R.Hybrid multimodality medical image fusion technique for feature enhan- cement in medical diagnosis[J].International Journal of Engineering Science Invention, 2018, 2(special issue): 52-60. |
|
|
|