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ASAR IMAGE TARGET RECOGNITION BASED ON THE COMBINED WAVELET
TRANSFORMATION
HE Hui, PENG Wanglu
College of Information Technology and Software Engineering, Beijing Normal University at Zhuhai, Zhuhai, China
Commission VII, WG VII/2
KEY WORDS: Advanced Synthetic Aperture Radar, Target Recognition, Combined Wavelet Transformation, Cloud Model,
Mathematical Morphology
ABSTRACT:
ASAR image target detection and recognition has been always a hot research. In this paper, on the foundation of the previous studies,
a target recognition method based on combined wavelet transformation and cloud model is proposed. According to the good local
characteristic, multi-resolution, effectiveness and the sensitivity to both direction and texture of the combined wavelet
transformation, the detection method based on combined wavelet restrained the image noise and the errors, such as the object
missing and false warning, caused by the use of the detection method based on the brightness alone. Then in order to solve the
uncertainty of pixels, especially the object edge, an integrated method named soft segmentation for image segmentation based on the
linguistic cloud model, which is a model for the conversion between qualitative and quantitative in the field of artificial intelligence
is applied. Accurate target recognition is achieved after further processing eventually, such as mathematical morphology analysis.
This integrated mechanism is applied to the ASAR data acquired from Zhuhai, China for carrying on the fish ponds recognition as
well as the comparative experiments with classical methods. Results show that this approach can recognize the target more
accurately and quick, which indicate that the synthetic scheme for target detection and recognition is flexible and robust and the
advantages to the traditional detection operators or crisp segmentation methods are distinct.
1. INTRODUCTION
Since 1970's, various countries, such as America and England,
have started to carry on the research on the automatic
processing of SAR. One of the typical examples is extracting
some significant characteristics from the SAR Imagery, such as
region division, target detection and recognition, edge
extraction and so on, which are impelled by the rapid
development of computer technology. In addition, with the
increasing development of radar signal processing technology,
the SAR imagery resolution has been largely enhanced, which
enables the realization for the automatic target detection of
SAR Imagery. ASAR (Advanced Synthetic Aperture Radar) has
been the most advanced imaging sensor on ENVISAT - 1 till
now, which works in the C band with five kind of imaging
patterns, seven kind of imaging strips and alternate polarized
imaging function. Furthermore, besides all-weather, all-day and
the certain penetrating characteristics like SAR, its data have
unique advantages to any other radar sensors ( Qingni, 2004).
Target detection and recognition on radar imagery is always the
hot but challenging issue during the latest decades, tackled by a
series of successful methods (.Lopes etc., 1993; Oliver etc.,
1996; Oliver, 1994). However, the radar remote sensing
imagery detection not only involves the pure target detection
simply, but also involves other instances, as the existence of
speckles can also affect the target detection and recognition. In
that case, it is needed to suppress the speckles to enhance the
recognition accuracy. In the scope of the intensity of echoes,
targets may be divided into strong and weak reflecting targets.
The weak reflecting targets like fish ponds should belong to the
category of target recognition
The wavelet transformation has been one of the applied
mathematical branches since later 1980s. Because of its partial,
multi-resolution analysis characteristics, the wavelet
transformation has already become one of the powerful image
signal analysis tools (Szu etc. 2002).The wavelet transformation
has also been widely applied to the SAR imagery target
detection (Zhengjun, 1999; Ling etc. 2004; Jie etc. 2003).
Besides, there are uncertainty factors of the remote sensing
information (Yong, etc. 2004), the traditional crisp
segmentation algorithm, can not describe images of uncertainty,
especially for the edge pixels. The cloud model brought forward
by LI Deyi (Deyi etc., 1998) can be used for the characteristics
of a simple and accurate mathematical description of the
concept of uncertainty, provides a quantitative and qualitative
transformation tools that can effectively achieve the image of
the soft partition.
Series of experiments about fish ponds recognition are carried
out in this article. To enhance the target recognition accuracy
and efficiency, according to the previous studies, a new
comprehensive recognition mechanism based on the combined
wavelet transformation and linguistic cloud model is proposed,
-in this article, experiments on the ASAR imagery of
Guangdong, Zhuhai are presented both to validate the
feasibility of the comprehensive mechanism and to compare
with the traditional methods.
2. FRAMEWORK OF COMBINED WAVELET
In order to collect the edge information and partial texture
information to suppress the disturbance of target detection, a
framework of combined wavelets is proposed, one of which is