JOURNAL OF RADARS
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JOURNAL OF RADARS  2013, Vol. 2 Issue (1): 30-38    DOI: 10.3724/SP.J.1300.2013.13016
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An Improved Phase Correlation Method for Obtaining Dynamic Feature of the Ocean from Sequential SAR Sub-aperture Images (in English)
Wang Xiao-qing*① Sun Hai-qing①② Chong Jin-song
(National Key Laboratory of Science and Technology on Microwave Imaging, Institute of Electronics, Chinese Academy of Sciences, Beijing 100190, China)
(Graduate University of Chinese Academy of Sciences, Beijing 100049, China)
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Abstract 

Dynamic features are important aspects of the ocean. However the dynamic information is lost in most conventional Synthetic Aperture Radar (SAR) image processing methods, because they treat the image as an instantaneous state of the observed area. In fact, we can obtain dynamic features of the ocean from sequential sub-aperture images, because we know that the different parts of the azimuthal aperture correspond to different imaging instances. A key step for retrieving the dynamic features from sequential images is image-matching. However, the heavy noise characteristic of sub-aperture SAR images renders the traditional image-matching methods ineffective. In this paper we propose an image matching method based on improved phase correlation to
deal with the heavy noise problem of SAR sub-aperture images. Experimental results show that the improved image-matching method presents an accuracy of 0.15 pixel and noise robustness. The analysis indicates that the improved algorithm is competent for obtaining dynamic information from the medium resolution airborne SAR images or high resolution spaceborne SAR images with 0.15-0.3 m/s estimation precision under most SNR conditions. The improved algorithm was used on an airborne SAR data to retrieve the movement velocity. The retrieved velocity ranged from 0.05-0.5 m/s, which seems to be reasonable value for the ocean current velocity.

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Articles by authors
Wang Xiao-qing
Sun Hai-qing
Zhong Jin-song
Key wordsOcean surface dynamic feature   Synthetic Aperture Radar (SAR) sub-aperture image   Image matching   Phase correlation     
Received: 2013-02-28; Published: 2013-03-27
Fund:

The National Natural Science Foundation of China (No. 41276185)

About author: Wang Xiao-qing was born in 1978. He received his Ph.D. degree from the Institute of Electronics, Chinese Academy of Sciences in 2006. He is currently an associate research fellow with the Institute of Electronics, Chinese Academy of Sciences. His research interests are SAR signal and marine information processing. E-mail: huadaqq@126.com Sun Hai-qing was born in 1989. She received her Master degree from the Institute of Electronics, Chinese Academy of Sciences in 2012. She is currently an engineer in Microsoft Corporation. Her research interests is image processing. E-mail: haiqingsun2010@gmail.com Chong Jin-song was born in 1969. She received her Ph.D. degree from the Institute of Electronics, Chinese Academy of Sciences in 2003. She is currently a research fellow with the Institute of Electronics, Chinese Academy of Sciences. Her research interests are SAR signal and marine information processing. E-mail: chongjinsong@sina.com.
Cite this article:   
Wang Xiao-qing,Sun Hai-qing,Zhong Jin-song. An Improved Phase Correlation Method for Obtaining Dynamic Feature of the Ocean from Sequential SAR Sub-aperture Images (in English)[J]. JOURNAL OF RADARS, 2013, 2(1): 30-38.
 
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