A NEW DATA FUSION METHOD FOR IMPROVING CBERS-1 IRMSS IMAGES BASED ON
CCD IMAGE
Z.R. Qi
Centre for Aero Geophysics and Remote Sensing, Ministry of Land and Resources, 29, College Road, Beijing,
China, gizr@cugb.edu.cn
KEY WORDS: CCD, Fusion, High Resolution, Registration, Pixel, Spectral
ABSTRACT:
A new data fusion method is proposed in this paper to improve
IRMSS image with lower spatial resolution is correspondence
resolution after precise co-registration. For each pixel in the
brightness values in the CCD image is computed. The difference
CBERS-1 IRMSS images based on CCD image. Each pixel in an
with a group of sub-pixels in a CCD image with higher spatial
[RMSS image, the average value of its co-registered sub-pixel
between the pixel brightness value in the IRMSS image and its sub-
pixels average value was added to every sub-pixel value in the CCD image. This procedure is applied to each pixel to produce a data
fusion image. The fusion image had more spatial details than the IRMSS image and had similar spectral information to the IRMSS
image. The test indicated that the new data fusion method was a superior fusion technique not only enhancing the spatial details of
IRMSS image but also keeping the fidelity to the image spectral properties. Different from the other data fusion methods, which
need more than one band low resolution image to be merged with one high resolution image, the new method can perform data
fusion for an individual low resolution image and it can be used
other higher resolution band image. It is a new, very simple and
for enhancement of the thermal infrared band 6 of Landsat with the
practical technique. It is potentially useful for enhancing the spatial
details and preserving the spectral fidelity of the low spatial resolution images.
1. INTRODUCTION
China-Brazilian earth resources satellite 1(CBERS-1) is
equipped with three types of sensorsCisuch as CCD camera
Infrared Multi-spectral Scanner(IRMSS) and Wide Field
Imager(WFI), and provides three types of remote sensing image
data (see table 1). Because of lower spatial resolution, CBERS-
| IRMSS images have not been widely used in application.
Data fusion technique can be used for improving the spatial
resolution and enhancing the spatial details for IRMSS images
with CCD image, which is potential useful and significant for
developing IRMSS image application market.
There are many methods for data fusion at the present, and they
can be divided into two methods: spectral component
substitution techniques and spatial domain techniques. The
former replaces a spectral component of the multi-spectral
images by the radio-metrically-adjusted pan-image such as hue-
intensity-saturation (HIS) colour spatial transformation and
principal component analysis (PCA) (P. S. Chavez et al, 1991:
C. Conese et al, 1992). The latter adds high resolution
information from the high resolution image to all the low
resolution spectral bands by using various deterministic or
statistical predictors, such as high pass filter (HPF) (C.Conese
et al, 1992; R. A. Schowengerdt, 1998; V.T. Tom et al, 1985),
wavelet transform (WT) (H. Li et al, 1995; B. Garguet-Duport
et al, 1996). Some researches combine two techniques, such as
combination of multi-resolution wavelet decomposition and
HIS transform for the fusion of high resolution pan-image and
multi-spectral images (Jorge Nunez et al, 1999). Price uses
panchromatic gray value to estimate single multi-spectral image
values as a result of the highly-correlated statistical analysis of
SPOT panchromatic channel (0.51-0.73pm) and TM 1(0.45-
0.52pm) ITM 2(0.52-0.60pm), so this algorithm is confined to
the images of highly-correlated statistical analysis (John C.
Price, 1987 and 1999). Zhukov etc. utilize the class information
of high resolution images and PSF (point spreading function) to
un-mix the low resolution images, but this algorithm needs
multiple high-resolution images so as to classify them (Boris
Zhukov et al, 1999). Ryuei Nishii etc. employ a multivariate
normal distribution for the seven TM band values to predict the
value of band 6 by the conditional expectations (Ryuei Nishii et
al, 1996). Jiao etc. present a data fusion algorithm based on
scale-transformation at spatial domain (Jiao et al, 2002).
Table 1. Some technique parameters of CBERS-1 sensors
Sensor Bands/ Lim Resolution Image width
/m in equator/km
B1: 0.45-0.52 20 113
B2: 0.52-0.59 20 113
CCo B3: 0.63-0.69 20 113
camera |.p4:0,77-089. | 20 113
B5: 0.51-0.73 20 113
B6: 0.50-0.90 78 120
B7: 1.55-1.75 78 120
IRMSS B8: 2.09-2.35 78 120
B9: 10.4-12.5 156 120
B10: 0.63-0.69 | 258 890
WEE | B11:0.77-0.89 [ass 890
All these methods described as above can improve the spatial
resolution for lower resolution images, but they cannol
completely restore the lower resolution images, i.e., they will
not preserve the spectral fidelity of lower resolution images 0
some extent after data fusion processing. For image processing,
image spectral analysis and interpretation, preserving spectral
fidelity is more important than enhancing the spatial details and
improving the spatial resolution for the lower resolution image
In order to integrate and process CCD and IRMSS images, and
to mine the multi-spectral properties in CBERS remote sensing
data, it is necessary to develop a data fusion method not only
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