光子学报, 2016, 45 (12): 1210002, 网络出版: 2016-12-26   

多算法融合的自适应图像增强方法

Adaptive Image Enhancement Based on Multiple Algorithm Fusion
作者单位
新疆大学 机械工程学院, 乌鲁木齐 830047
摘要
提出一种多算法融合的图像增强方法, 用于工程应用中的复杂降质图像的细节特征恢复.该方法汲取了Laplacian变换法、Sobel梯度法、盒状滤波法、非锐化掩蔽法及灰度幂律法等算法的优点, 可对模糊图像进行自适应增强.通过拉普拉斯滤波器和梯度滤波器将原始图像分为基础层、细节层及边缘特征层;对微小细节信息及边缘特征信息进行增强,对基础信息进行压缩;然后采用盒装滤波器对图像的三个分层进行平滑过度及噪音过滤,最后使用非锐化掩蔽法和灰度变换来增加图像灰度的动态范围,从而得到增强后的图像.在相同的工况下, 该方法分别与直方图均衡法、自适应伽马矫正法及小波变换的图像增强法实验结果进行对比,结果表明,该方法将图像的清晰度提高了13.1%~126.1%, 能有效地处理复杂型感染的图像, 避免图像过度增强, 可以获得适合人眼的最佳视觉细节内容的增强效果.
Abstract
For the detail features of the complex degraded images being effectively restored in engineering application, an image enhancement method of the multiple algorithm-fusion was introduced. This fusion algorithm is based on the theory of digital image and integrates the advantages of the Laplace transform, Sobel gradient, box filtering, unsharp masking filter method and gray exponential law strength into the algorithm to enhance the fuzzy images adaptively. The original image, firstly, is decomposed into a base layer, a detail layer and a edge character layer by the Laplace filter and gradient filter. Secondly, the tiny details and edge characteristic information are enhanced and base information is compressed. Then the three layers of the image are processed smoothly and the noise is filtered by the box filtering. Finally, the dynamic range of gray level image is increased by the gray-scale transformation and the unsharp masking method, and the enhanced image is obtained. And under the same load conditons, the proposed method is compared respectively with the traditional algorithms of the HE, AGCWD and WT. The experiment results show that this method can effectively handle the complex images with infection, and the sharpness of the image is increased by 13.1% ~ 126.1%, and avoid the phenomenon of excessive image enhancement, and obtain a superior subjective visual detail effects.
参考文献

[1] 刘尚平, 陈骥. 基于Gabor滤波与数学形态的视网膜图像增方法[J]. 光电子·激光, 2010, 21(2): 328-322.

    LIU Shang-ping, CHEN Ji. Enhancement method for retinal images based on Gabor filter and morphology[J]. Journal of Optelectronics·Laser, 2010, 21(2): 328-322.

[2] 常霞, 焦李成, 贾建华, 等. 基于小波域三状态HMT模型的含噪图像增强[J]. 光子学报, 2010, 39(8): 1351-1358.

    CHANG Xia, JIAO Li-cheng, JIA Jian-hua, et al. Noisy image enhancement based on three-state HMT model in wavelet domain[J]. Acta Photonica Sinica, 2010, 39(8): 1351-1358.

[3] 吴一全, 史俊鹏. 基于多尺度 Retinex 的非下采样 Contourlet 域图像增强[J]. 光学学报, 2015, 35(3): 0310002

    WU Yi-quan, SHI Jun-peng. Image enhancement in non-subsampled contourlet transform domain based on multi-scale retinex[J]. Acta Optica Sinica, 2015, 35(3): 0310002.

[4] 储昭辉, 汪荣贵, 张璇, 等. 基于Retinex理论JPEG2000压缩图像增强方法[J]. 光子学报, 2012, 41(2): 200-204.

    CHU Zhao-hui, WANG Rong-gui, ZHANG Xuan, et al. Enhancement method of GPEG2000 compression image based on retinex theory[J]. Acta Photonica Sinica, 2012, 41(2): 200-204.

[5] 窦 智, 韩玉兵, 盛卫星, 等. 双通道局部处理的自适应图像增强方法[J]. 计算机辅助设计与图形学学报, 2015, 27(10): 1823-1831.

    DOU Zhi, HAN Yu-bing, SHENG Wei-xing, et al. Adaptive image enhancement via local processing in double channel[J]. Journal of Computer-Aided Design & Computer Graphics, 2015, 27(10): 1823-1831.

[6] KAREN P, ZHOU Yi-cong. Parameterized logarithmic framework for image enhancement[J]. IEEE Transactions on Systems, 2011, 41(2): 460-473.

[7] SHAHAN C, KAREN A, SOS S. Non-linear direct multi-scale image enhancement based on the luminance and contrast masking characteristics of the human visual system[J]. IEEE Transactions on Image Processing, 2013, 22(9): 3549-3561.

[8] HASAN D, GHOLAMREZA A. Image resolution enhancement by using discrete and stationary wavelet decomposition[J]. IEEE Transactions on Image Processing, 2011, 20(5): 1458-1460.

[9] GHIMIRE D, LEE J. Nonlinear transfer function-based local approach for color image enhancement[J]. IEEE Transactions on Consumer Electronic, 2011, 57(2): 858-865.

[10] HUANG Li-dong, ZHAO Wei, WANG Jun, et al. Combination of contrast limited adaptive histogram equalisation and discrete wavelet transform for image enhancement[J]. IET Image Processing, 2014, 9(10): 908-915.

[11] NIKOLOVA M, STEIDL G. Fast hue and range preserving histogram specification: theory and new algorithms for color image enhancement[J]. IEEE Transactions on Image Processing, 2014, 23(9): 4187-4100.

[12] XU Bei-lei, ZHUANG Yi-qi, TANG Hua-lian, et al. Object-based multilevel contrast stretching method for image enhancement[J]. IEEE Transactions on Consumer Electronic, 2010, 56(3): 1746-1754.

[13] 阮秋琦, 阮宇智. 数字图像处理(第三版)[M].电子工业出版社, 2011,06.

巨刚, 袁亮, 刘小月, 何巍. 多算法融合的自适应图像增强方法[J]. 光子学报, 2016, 45(12): 1210002. JU Gang, YUAN Liang, LIU Xiao-yue, HE Wei. Adaptive Image Enhancement Based on Multiple Algorithm Fusion[J]. ACTA PHOTONICA SINICA, 2016, 45(12): 1210002.

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