IEEE Access (Jan 2019)

Image Fusion Method Based on Structure-Based Saliency Map and FDST-PCNN Framework

  • Jiang Qian,
  • Liu Yadong,
  • Dai Jindun,
  • Fu Xiaofei,
  • Jiang Xiuchen

DOI
https://doi.org/10.1109/ACCESS.2019.2924033
Journal volume & issue
Vol. 7
pp. 83484 – 83494

Abstract

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Image fusion has become an active and promising research topic in image processing. It provides an effective way to combine several source images to form a composite image with more detailed information than any one of the source images. An FDST-PCNN framework, which integrates finite discrete shearlet transform (FDST) with pulse-coupled neural network (PCNN), is proposed to possess a higher ability enhance fusion effects. We first propose a structure-based saliency (SBS) map to enhance the clear and important features in one image. The SBS map combines the depth information with the saliency information and could be a good representation of the most essential information of the source images. After multi-scale decomposition by the FDST, the SBS map of the source images and the modified-spatial-frequency of the subbands are both utilized to tune the PCNN neuron response and determine the fused coefficients in each subband. The experimental results on multi-focus and multi-sensor images verify the effectiveness of our proposed fusion method. Compared with other PCNN-based fusion methods, the proposed method achieves significant improvement in preserving detailed edge information and improving overall visual performance.

Keywords