CVDec 24, 2018

Color Image Enhancement Method Based on Weighted Image Guided Filtering

arXiv:1812.09930v12 citations
Originality Incremental advance
AI Analysis

This is an incremental improvement for image processing applications, addressing issues like local blur and halo artifacts in color enhancement.

The paper tackles color image enhancement under non-uniform illumination by using a Weighted Guided Image Filter as a surround function in a Retinex-based method, resulting in better visual quality and superior objective evaluation indicators compared to traditional methods.

A novel color image enhancement method is proposed based on Retinex to enhance color images under non-uniform illumination or poor visibility conditions. Different from the conventional Retinex algorithms, the Weighted Guided Image Filter is used as a surround function instead of the Gaussian filter to estimate the background illumination, which can overcome the drawbacks of local blur and halo artifact that may appear by Gaussian filter. To avoid color distortion, the image is converted to the HSI color model, and only the intensity channel is enhanced. Then a linear color restoration algorithm is adopted to convert the enhanced intensity image back to the RGB color model, which ensures the hue is constant and undistorted. Experimental results show that the proposed method is effective to enhance both color and gray images with low exposure and non-uniform illumination, resulting in better visual quality than traditional method. At the same time, the objective evaluation indicators are also superior to the conventional methods. In addition, the efficiency of the proposed method is also improved thanks to the linear color restoration algorithm.

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