MULTI-SPECTRAL IMAGE FUSION METHOD BASED ON WAVELET
TRANSFORMATION
a YAO Wan-qiang b ZHANG Chun-sheng
d Dept, of Survey Engineering, Xi’an University of Science & Technology, Xi’an 710054, China, - sxywq@163.com
b Dept, of Survey Engineering, Xi’an University of Science & Technology, Xi’an 710054, China - chshzh@sohu.com
Commission VII, WG Vll/6
KEY WORDS: Image fusion; Wavelet transform; Weighting average; Threshold; Characteristic of human vision system
ABSTRACT:
The paper focuses on image fusion between multi-spectral images and panchromatic images using a wavelet analysis method with
good signal processing and image processing traits. A new weighting technique is developed based on wavelet transformation for the
fusion of a high spatial resolution image and a low-resolution, multi-spectral image. The method improves a standard wavelet
merger for merging the lower frequency components of a multi-spectral image and its high spatial resolution image by means of
local deviation rules with weighting average. And then the merged image is reconstructed by an inverse wavelet transform using the
fused approximation and details from the high spatial resolution image. Also, a multi-spectral images fusion algorithm is proposed
based on wavelet transform characteristic of human vision system. Firstly, perform a wavelet multi-scale transformation of each
source image. Then a new fusion regular is presented based on human vision system corresponding high (low) frequency
components are divided into several blocks, and contrast error of every block is calculated, an adaptive threshold selection is
proposed to decide which should be used to construct the new high (low) frequency components. Finally, the fused image is
obtained by taking inverse wavelet transform. The experimental results show that the new method presented is clearly better in not
only preserving spectral and improving spatial presentation, but also avoiding mosaic occurring.
1. INTRODUCTION
2. IMAGE FUSION BASIC FLOW
The image fusion is that the multiple images which obtains
from a sensor or many sensors synthesizes an image, in which
the information from the multiple primitive images can be
reflected so as to analyze and judge the target more precisely
and comprehensively. Because both the images gain from
multi-sensors have the redundancy and the complement, the
multi-sensor image fusion technology may enhance the
reliability of the system and also enhance the use efficiency of
the pictorial information [1]. At present, various militarily
significant states in the world competitively invest massive
manpower, physical resource and financial resource to carry
on the information fusion technology and have obtained
magnificent research results. Take US for example, the
expense that is used, every year, in the research of
information fusion technology amount to more than
100,000,000 US dollar. The image fusion technology in such
aspects as medicine, remote sensing, computer vision, weather
forecast has also been widely applied. Especially in the
computer visual aspect, in the astronautics and aviation multi
delivery platform, the massive remote sensing image fusion
obtained from each kind of remote sensor in different spectra,
different wave bands, different temporal or different angles
provides good processing method for information highly
effective extraction, and obtains obvious benefit. In the last
few years, along with the information fusion technology
development, obtaining the remote sensing image in double
high resolution with the post-processing method has become
the essential target and the duty of the remote sensing
information fusion, and has formed many algorithms, like IHS
algorithm, PCA algorithm and that based on wavelet
transformation algorithm.
The commonly classification of image fusion is based on the
image attribute, which divides image fusion into three levels,
namely picture element level, characteristic level and policy
making level fusion. The object of image fusion data may can
be divided into the optical image and the non-optical image
according to the image formation way. The basic processes of
Figure 1 Basic procedure of image fusion between multi-
spectral images and panchromatic images