Jianping Li's research while affiliated with University of Electronic Science and Technology of China and other places

What is this page?


This page lists the scientific contributions of an author, who either does not have a ResearchGate profile, or has not yet added these contributions to their profile.

It was automatically created by ResearchGate to create a record of this author's body of work. We create such pages to advance our goal of creating and maintaining the most comprehensive scientific repository possible. In doing so, we process publicly available (personal) data relating to the author as a member of the scientific community.

If you're a ResearchGate member, you can follow this page to keep up with this author's work.

If you are this author, and you don't want us to display this page anymore, please let us know.

Publications (1)


Source images: (a) Plane left focus; (b) Plane right focus; (c) Clock left focus; (d) Clock right focus. (e) Flower left focus; (f) Flower right focus; (g) Book left focus; (h) Book right focus.
PCNN
PCNN
Difference results for Pepper images: (a)~(h) is the difference between Figure 2(a) and Figures 3(a)~3(h), respectively.
PCNN

+87

Multifocus Image Fusion Using Biogeography-Based Optimization
  • Article
  • Full-text available

February 2015

·

146 Reads

·

11 Citations

Mathematical Problems in Engineering

Ping Zhang

·

Chun Fei

·

Zhenming Peng

·

[...]

·

Hongyi Fan

For multifocus image fusion in spatial domain, sharper blocks from different source images are selected to fuse a new image. Block size significantly affects the fusion results and a fixed block size is not applicable in various multifocus images. In this paper, a novel multifocus image fusion algorithm using biogeography-based optimization is proposed to obtain the optimal block size. The sharper blocks of each source image are first selected by sum modified Laplacian and morphological filter to contain an initial fused image. Then, the proposed algorithm uses the migration and mutation operation of biogeography-based optimization to search the optimal block size according to the fitness function in respect of spatial frequency. The chaotic search is adopted during iteration to improve optimization precision. The final fused image is constructed based on the optimal block size. Experimental results demonstrate that the proposed algorithm has good quantitative and visual evaluations.

Download
Share

Citations (1)


... Commonly used focus measure include the energy of Laplacian (EOL), the energy of gradient (EOG), the spatial frequency (SF), and the sum of modified Laplacian (SML), and so on [4]. In addition, researchers have made many attempts to segment source images, such as manually setting the size of blocks [12,13] and block optimization [14][15][16]. However, these segmented blocks are fixed, which may introduce unexpected block effects into the fused images. ...

Reference:

Multi-focus image fusion using residual removal and fractional order differentiation focus measure
Multifocus Image Fusion Using Biogeography-Based Optimization

Mathematical Problems in Engineering