2008
1223
HYPERSPECTRAL RESOLUTION ENHANCEMENT USING HIGH-RESOLUTION
IMAGERY WITH WAVELET PACKAGE ALGORITHM AND OPTIMAL INDEX
PRINCIPLE
D. G. Jun a , Z. Haifang b , Z. chaojie c
a State Key Laboratory of Remote Sensing, Science, China, Beijing - topd@163.com
b School of Computer Science, National University of Defence Technology, P. R. China, Changsha
c Surveying and mapping group of Chengdu, P. R. China, Chengdu, Shuhan Street - zhu202@sohu.com
Commission WG VII/6
KEY WORDS: fusion, Hyper spectral, Processing, Imagery, Matching
ABSTRACT:
In this paper, aiming at image displaying and considering the characteristics of hyperspectral data and the requirements of practical
application, a new hyperspectral image fusion method is proposed. This wavelet package image fusion approach is based on optimal
index principle. The approach first selects optimal fusion bands of hyperspectral data by optimal index to construct synthesized low-
resolution colour image and then fuses images by wavelet package algorithm which is based on multi-features in a region. The
validity of the approach is testified by hyperspectral PHI data of shanghai area. Experiment shows that this approach can fuse
hyperspectral data and high-resolution remote sensing data effectively and keep hyperspectral image’s spectral physical
characteristics and shape, thus satisfies the requirements of practical applications and provides a better condition for further
researches.
1. INTRODUCTION
The development and application of hyperspectral techniques
request more advanced approaches to process the hyperspectral
remote sensing data with large dimensions, and hyperspectral
image fusion technique is a hot but fairly difficult research field.
Within optical remote sensor systems, image’s spatial
resolution is contradictive to its spectral resolution, which is
that in case of known Signal-to-Noise, high spectral resolution
(narrow spectral bands) is often obtained at the expense of
spatial resolution. In order to solve this problem, hyperspectral
satellite sensors such as LOUIS, ASTER, MODIS and so on
are all equipped with high spatial resolution sensors, so that
after fusion of spectral data and high-resolution spatial data, the
spectral images spatial analytical characteristic is greatly
improved and simultaneously its spectral physical
characteristics and spectral information is efficiently kept
(Zhang,2000).
Presently there are many fusion approaches for multi-spectral
remote sensing image and high-resolution panchromatic image.
Because of limited data resources, hyperspectral image fusion
methods are relatively less (Park,2000). Analyzing the
characteristics of hyperspectral images, adopting the thought of
spectral fusion and based on image spectral recovering
approach, a new spatial remote sensing data fusion model
(SFSR) which first applies histogram equalization to
hyperspectral image and high-resolution panchromatic image
and then fuse them on each spectral band separately is
proposed (Zhang,2000). On the basis of adaptive spatial
decomposing approach and based on local information entropy,
a multi-scale wavelet fusion method to extract feature images is
proposed (Zhang,2002). And by feature selection principle
based on contrast sensitivity, Wilson proposed a hyperspectral
image fusion method to avoid the data processing problem
caused by massive data (Wilson, 1998). However, these multi
scale fusion methods usually fuse images based on single
feature and definitely have some limits (Zhang,2004). Moreover,
wavelet transformation fusion method can decompose, fuse and
reconstruct images iteratively, but these operations are only
conducted on image’s low frequency part while its high
frequency part (the image’s detailed part) is ignored.
The combing of hyperspectral image and its spectrum and the
characteristics of massive data make it difficult to fuse
hyperspectral image while using common fusion methods. In
this paper, aiming at image displaying and considering the
characteristics of hyperspectral data and the requirements of
practical application, a new hyperspectral image fusion method
is proposed. This method can keep hyperspectral image’s
spectral physical characteristics and shape, and thus satisfies the
requirements of practical applications and provides a better
condition for further researches.
2. WAVELET PACKAGE FUSION METHOD FOR
HYPERSPECTRAL IMAGE BASED ON OIF
Wavelet transformation fusion method can decompose, fuse and
reconstruct images iteratively, but these operations are only
conducted on image’s low frequency part while its high
frequency part (the image’s detailed part) is ignored. However,
wavelet package can efficiently avoid this problem and further
decompose image’s high frequency part on different scale, and
thus obtain higher quality images. In practical applications, we
are more concerned with improving the spatial resolution of
fused image and ensure that its overall tone is consistent.
Therefore, in this paper, an image fusing method based on OIF
is proposed, the main idea of which is that: first select the
optimal synthesizing bands of hyperspectral image by optimal
index principle and obtain low-resolution synthesized colour
image, then based on multi-features in a region, fuse it with