International Journal of Advanced Robotic Systems (Mar 2017)

Saturation-based quality assessment for colorful multi-exposure image fusion

  • Chenwei Deng,
  • Zhen Li,
  • Shuigen Wang,
  • Xun Liu,
  • Jiahui Dai

DOI
https://doi.org/10.1177/1729881417694627
Journal volume & issue
Vol. 14

Abstract

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Multi-exposure image fusion is becoming increasingly influential in enhancing the quality of experience of consumer electronics. However, until now few works have been conducted on the performance evaluation of multi-exposure image fusion, especially colorful multi-exposure image fusion. Conventional quality assessment methods for multi-exposure image fusion mainly focus on grayscale information, while ignoring the color components, which also convey vital visual information. We propose an objective method for the quality assessment of colored multi-exposure image fusion based on image saturation, together with texture and structure similarities, which are able to measure the perceived color, texture, and structure information of fused images. The final image quality is predicted using an extreme learning machine with texture, structure, and saturation similarities as image features. Experimental results for a public multi-exposure image fusion database show that the proposed model can accurately predict colored multi-exposure image fusion image quality and correlates well with human perception. Compared with state-of-the-art image quality assessment models for image fusion, the proposed metric has better evaluation performance.