光谱学与光谱分析 |
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Spatial Domain Display for Interference Image Dataset |
WANG Cai-ling1,LI Yu-shan2*,LIU Xue-bin1,HU Bing-liang1,JING Juan-juan1,WEN Jia1 |
1. Key Lab of Spectral Imaging in Xi’an Institute of Optics and Precision Mechanics of Chinese Academy of Sciences,Xi’an 710119,China 2. CAD Lab of Xidian University, Xi’an 710069,China |
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Abstract The requirements of imaging interferometer visualization is imminent for the user of image interpretation and information extraction. However, the conventional researches on visualization only focus on the spectral image dataset in spectral domain. Hence, the quick show of interference spectral image dataset display is one of the nodes in interference image processing. The conventional visualization of interference dataset chooses classical spectral image dataset display method after Fourier transformation. In the present paper, the problem of quick view of interferometer imager in image domain is addressed and the algorithm is proposed which simplifies the matter. The Fourier transformation is an obstacle since its computation time is very large and the complexion would be even deteriorated with the size of dataset increasing. The algorithm proposed, named interference weighted envelopes, makes the dataset divorced from transformation. The authors choose three interference weighted envelopes respectively based on the Fourier transformation, features of interference data and human visual system. After comparing the proposed with the conventional methods, the results show the huge difference in display time.
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Received: 2010-12-28
Accepted: 2011-03-25
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Corresponding Authors:
LI Yu-shan
E-mail: Yushanli@mail.xidian.edu.cn
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