International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B7, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia
TEXTURE ANALYSIS BASED FUSION EXPERIMENTS USING HIGH-RESOLUTION
SAR AND OPTICAL IMAGERY
Shuhe Zhao', Yunxiao Luo, Hongkui Zhou, Qiao Xue, An Wang
School of Geographic & Oceanographic Sciences, Nanjing University, Nanjing 210093, P.R. China,
zhaosh@nju.edu.cn
KEYWORDS: Data Fusion, Texture Analysis, Terrasar-X, Quickbird, Evaluation
ABSTRACT:
High resolution SAR images contain plenty of detailed textural features, and optical images have spectral features. For the different
characteristics of the two images, Firstly, we extracted textural measures of TerraSAR-X image based on the Gray Level Co-occurrence Matrix
(GLCM) method, and chose the appropriate window. Then data fusion between textural measures of TerraSAR-X image and QuickBird multi-
spectral image was implemented based on PCA transform, and the fusion results were quantitatively evaluated, showing that the fusion image
keep spectral information well and the spatial information be enhanced.
1. INTRODUCTION
Multi-spectral optical images have abundant spectral information and
provide good discrimination ability, but acquisition of them is
affected by atmospheric phenomena, such as cloud cover, smog, haze
and winter darkness. SAR images can be operated under any weather
conditions, but their discrimination ability is affected by the presence
of speckle and single frequency nature [1]. So it is useful to fuse the
two kinds of data to overcome the disadvantages and obtain more
information. There are several work have been done on this. However,
fusion of different sensor data such as those in optical and radar
imagery is still a challenge [2].
In the interpretation of synthetic aperture radar (SAR) images, texture
provides important information, in addition to image gray levels or
the backscatter values alone [3]. And also texture may, in fact, be
more useful than image tone in interpreting radar images [4]. It is
very important to investigate textural information in SAR images,
especially for high resolution SAR images, like TerraSAR-X. Gray
Level Co-occurrence Matrix (GLCM) was put forward by Haralick et
al. [5], which is the most popular used texture image generation and
analysis scheme [6].
So in this paper, we will firstly analyze the textural information of
TerraSAR-X image based on GLCM, deicide a proper moving
window size and extract some textural measures from it. Then fuse
the textural measures and QuickBird multi-spectral image by
principal component analysis method.
2. STUDY AREA AND DATA
2.1 Study area
The capital of Jiangsu province in China, Nanjing, has been selected
as the study site. The area chosen for this study covers a very small
portion, and situates in the nearby area of Nanjing Yangtze River
Bridge (32°08'19"N-32°6'4"N, 118°43'26"E-118°46"25"E) (Fig. 1). It
Covers an area of about 4.8km X 4. 1km, with a variety of land cover.
* Corresponding author.
x S i.
(a) (b)
Figure 1. Images of study area, (a) is the Standard false-color
composite image of QuickBird, and (b) is TerraSAR-X HH image.
2.2 Data
In this study, a QuickBird image of June 2007 and a TerraSAR-X
image of 4 March 2008 have been used. The QuickBird data have
four multispectral bands and one panchromatic band. In this study,
green, red and near infrared bands have been used. TerraSAR-X is an
X-band polarimetric SAR, and the data used in the study is Stripmode,
at a high resolution of 3 m.
3. METHODOLOGY
3.1 Data preprocessing
Different from optical images, SAR images have a granular
appearance due to the speckle formed as a result of the coherent
radiation used for radar systems, which reduces the spatial resolution
and fine structure of the image, and makes interpretation of SAR
images more complex. So the reduction of the speckle is a very
important step in further analysis. The analysis of the radar images
must be based on the techniques that remove the speckle effects
while considering the intrinsic texture of the image frame [7]. As the
noise in SAR images is multiplicative noise, in this study, several
classical adaptive filters [8] for speckle suppression such as Lee,
Enhanced Lee, Frost, Enhanced Frost, and Gamma-map were
compared. The method Lee with 5x5 was chosen, for the speckle
noise was reduced with very low degradation of the textural
information.