Applied Sciences (Sep 2023)

A Low-Brightness Image Enhancement Algorithm Based on Multi-Scale Fusion

  • Enqi Zhang,
  • Lihong Guo,
  • Junda Guo,
  • Shufeng Yan,
  • Xiangyang Li,
  • Lingsheng Kong

DOI
https://doi.org/10.3390/app131810230
Journal volume & issue
Vol. 13, no. 18
p. 10230

Abstract

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Images captured in low-brightness environments typically have low brightness, low contrast, and high noise levels, which significantly affect the overall image quality. To improve the image quality, a low-brightness image enhancement algorithm based on multi-scale fusion is proposed. First, a novel brightness transformation function is used for the generation of two images with different brightnesses. Then, the illumination estimation technique is used to construct a weight matrix, which facilitates the extraction of advantageous features from each image. Finally, the enhanced image is obtained by the fusion of two images using the weight matrix and the pyramid reconstruction algorithm. The proposed method has a better enhancement effect as shown by the experimental results. Compared to other image enhancement algorithms, it has lower evaluation values in the natural image quality evaluator (NIQE) and lightness order error (LOE) indices. The lowest average NIQE value of the proposed algorithm in each dataset is 2.836. This further demonstrates its superior performance.

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