4.3 Article

Diverse image enhancer for complex underexposed image

Journal

JOURNAL OF ELECTRONIC IMAGING
Volume 31, Issue 4, Pages -

Publisher

SPIE-SOC PHOTO-OPTICAL INSTRUMENTATION ENGINEERS
DOI: 10.1117/1.JEI.31.4.041213

Keywords

image enhancement; machine vision; retinex; illumination estimation; exposure correction

Funding

  1. New generation information technology innovation project of the Ministry of Education [2020ITA05022]
  2. Provincial Social Science Foundation [21ZD137]
  3. Natural Science Foundation of Hubei Province [2021CFB316]
  4. Hundreds of Schools Unite with Hundreds of Counties-University Serving Rural Revitalization Science and Technology Support Action Plan [BXLBX0847]
  5. Excellent young and middle-aged scientific and technological innovation team project of colleges and universities in Hubei Province [T201924]

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The visual appearance of images changes with varying environmental light conditions. Adjusting the exposure of various distorted images is a complex process. Existing approaches have not achieved visually pleasing results or are limited to certain types of images. To address exposure in various distorted images, a diverse image enhancement model was proposed, improving brightness, contrast, color, and eliminating haze.
The visual appearance of images changes in line with varying environmental light conditions. Adjusting the exposure of various distorted images is a highly complex process. Previous approaches have addressed this issue from different viewpoints and attained remarkable progress. However, they either failed to achieve visually pleasing results or were suitable for a single class of images (e.g., underexposed or nonuniform images). To fully consider the exposure in various distorted images, we proposed a diverse image enhancement model that improved the brightness and contrast, processed the colors, and eliminated the hazy effect. Accordingly, an input red green blue color image was transformed into a hue, saturation, value color image. The V component was inverted and enhanced using three steps. In the first step, the hyperbolic and statistical methods were applied, and then their results were combined using an adjusted logarithmic methodology. This method properly adjusted the high-contrast and low-contrast impact while preserving the vital image information. In the second step, the output of the first step was inverted back and fed into a complete optimization algorithm to estimate the illumination map. Then, the exposure ratio map was estimated using an illumination map, which was adjusted using the camera response function. In the third step, a nonlinear stretching function was introduced to control brightness and contrast. For instance, a lower value of alpha yielded maximum stretching, and a higher value of alpha eliminated haze in the image to a great extent. Finally, an empirical evaluation and comparison of the most recent state-of-the-art approaches on eight datasets revealed that the proposed model efficiently addressed the exposure in various degraded images.

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