Computational imaging from non-uniform degradation of staggered TDI thermal infrared imager

For the Time Delay Integration (TDI) staggered line-scanning thermal infrared imager, a Computational Imaging (CI) approach is developed to achieve higher spatial resolution images. After a thorough analysis of the causes of non-uniform image displacement and degradation for multi-channel staggered...

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Published inOptics express Vol. 23; no. 19; p. 24572
Main Authors Sun, Tao, Liu, Jian Guo, Shi, Yan, Chen, Wangli, Qin, Qianqing, Zhang, Zijian
Format Journal Article
LanguageEnglish
Published United States 21.09.2015
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Summary:For the Time Delay Integration (TDI) staggered line-scanning thermal infrared imager, a Computational Imaging (CI) approach is developed to achieve higher spatial resolution images. After a thorough analysis of the causes of non-uniform image displacement and degradation for multi-channel staggered TDI arrays, the study aims to approach one-dimensional (1D) sub-pixel displacement estimation and superposition of images from time-division multiplexing scanning lines. Under the assumption that a thermal image is 2D piecewise C(2) smooth, a sparse-and-smooth deconvolution algorithm with L1-norm regularization terms combining the first and second order derivative operators is proposed to restore high frequency components and to suppress aliasing simultaneously. It is theoretically and experimentally demonstrated, with simulation and airborne thermal infrared images, that this is a state-of-the-art practical CI method to reconstruct clear images with higher frequency components from raw thermal images that are subject to instantaneous distortion and blurring.
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content type line 23
ISSN:1094-4087
1094-4087
DOI:10.1364/OE.23.024572