关键词: 多谱段图像增强/
细节特征/
引导滤波/
形态学操作
English Abstract
Multispectral image enhancement based on illuminance-reflection imaging model and morphology operation
Wang Dian-Wei1\21,2,Han Peng-Fei1,
Fan Jiu-Lun1,
Liu Ying1\21,2,
Xu Zhi-Jie3,
Wang Jing4
1.School of Communications and Information Engineering, Xi'an University of Posts and Telecommunications, Xi'an 710121, China;
2.Key laboratory of Electronic Information Application Technology for Scene Investigation, Ministry of Republic Security, Xi'an 710121, China;
3.School of Computing and Engineering, University of Huddersfield, Huddersfield HD1 3DH, UK;
4.Department of Computing, Sheffield Hallam University, Sheffield S1 1WB, UK
Fund Project:Project supported by the National Natural Science Foundation of China (Grant No. 61671377), the 2018 "Dual-Tutor System" Project for Innovation and Entrepreneurship of Natural Science Research Program of Shaanxi Province, China (Grant No. 2018JM6118), the Innovation and Entrepreneurship Project of Xi'an University of Posts and Telecommunications, China (Grant No. 2018SC-08), and the Xi'an University of Posts and Telecommunications Graduate Innovation Fund, China (Grant No. CXJJ2017057).Received Date:04 July 2018
Accepted Date:10 August 2018
Published Online:05 November 2018
Abstract:In this paper we propose a multispectral image enhancement algorithm based on illuminance-reflection imaging model and morphology operation that enables us to solve the problem of improving the multispectral degraded images. Firstly, we transform the image from RGB space to HSV color space, and the hue remains unchanged. As for the saturation component, we use the adaptive nonlinear stretching to improve the image color saturation and brightness. Secondly, according to the illuminance-reflection imaging model, we adopt the guided image filtering method to decompose the brightness into illuminance component and reflection component. Usually, the illumination component mainly determines the dynamic range of the pixels in the image, corresponding to the low frequency part of the image, reflecting the global characteristics of the image and the edge detail information of the image; the reflected component represents the intrinsic essential characteristics of the image, corresponding to the high frequency part of the image, and contains most of the local detail information of the image as well as all noise. Thirdly, we present an improved adaptive gamma function, which can dynamically adjust the illuminance component by the local distribution characteristics, and use the contrast-limited adaptive histogram equalization to correct the illuminance component. Afterwards we propose a detail-feature weighted fusion strategy. The original illumination and the two corrected illuminations are fused to obtain the final illumination component. Fourthly, we propose an improved morphological operation to denoise and enhance the details of the reflection component. Finally, the corrected illumination component and the enhanced reflection component are combined to obtain the improved brightness component. In order to verify the efficiency of the algorithm proposed in the paper, we use both subjective visual effectiveness method and quantitative parameter analysis method to measure the enhancement performance in multispectral imaging scenarios, including low illumination image, underwater image, high-dynamic range image, sandstorm image, haze image and thermal infrared image. Then standard deviation, information entropy and average gradient are used as evaluation indices respectively, and qualitative and quantitative comparison with a variety of image enhancement algorithms show that the proposed algorithm can not only well suppress noise but also obviously improve local details and global contrast. Experimental results show that the proposed method proves to be better in performance.
Keywords: multispectral image enhancement/
detailed-features/
guided image filter/
morphological operation