Article ID Journal Published Year Pages File Type
528286 Information Fusion 2013 9 Pages PDF
Abstract

Because subjective evaluation is not adequate for assessing work in an automatic system, using an objective image fusion performance metric is a common approach to evaluate the quality of different fusion schemes. In this paper, a multi-resolution image fusion metric using visual information fidelity (VIF) is presented to assess fusion performance objectively. This method has four stages: (1) Source and fused images are filtered and divided into blocks. (2) Visual information is evaluated with and without distortion information in each block. (3) The visual information fidelity for fusion (VIFF) of each sub-band is calculated. (4) The overall quality measure is determined by weighting the VIFF of each sub-band. In our experiment, the proposed fusion assessment method is compared with several existing fusion metrics using the subjective test dataset provided by Petrovic. We found that VIFF performs better in terms of both human perception matching and computational complexity.

► We propose a new image fusion metric (VIFF) based on visual information fidelity. ► What is a fair performance comparison among image fusion metrics is discussed. ► VIFF is compared with 8 popular image fusion metrics on a database. ► VIFF shows highest predictive performance over others. ► An approximate estimation of fusion metric’s time complexity is given.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
Authors
, , , ,