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Fast Curvelet Transform Based Non-uniformity Correction for IRFPA

机译:基于快速Curvelet变换的IRFPA非均匀性校正

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The Curvelet transform was developed from the wavelet transform. The applications of Curvelet transform reveal its great potential in image processing due to its unique characteristics. In this paper, the theory and implementation of Curvelet transform is summarized. The traditional Curvelet transform involves a complicated index structure which makes the mathematics and quantitative analysis especially delicate, and it uses overlapping windows increasing the redundancy. The Fast Curvelet Transform was discussed in this paper, which has the optimal sparse representation. By utilizing Curvelet wrapping algorithm based on translation invariance to the nonuniformity correction of the IRFPA, better MSE compared with traditional methods can be obtained. Great compute and analysis have been realized by using the discussed algorithm to the simulated data and real infrared scene data respectively. The experimental results demonstrate, the corrected image by this fast Curvelet transform algorithm not only yields highest Peak Signal-to-Noise Ratio values (PSNR = 33.803), but also achieves best visual quality.
机译:Curvelet变换是从小波变换发展而来的。 Curvelet变换的应用由于其独特的特性而显示出其在图像处理中的巨大潜力。本文总结了Curvelet变换的理论和实现。传统的Curvelet变换涉及复杂的索引结构,这使得数学和定量分析变得特别精细,并且使用重叠的窗口来增加冗余度。本文讨论了具有最佳稀疏表示的快速Curvelet变换。利用基于平移不变性的Curvelet包裹算法对IRFPA的不均匀性进行校正,可以获得比传统方法更好的MSE。通过将所讨论的算法分别应用于模拟数据和真实红外场景数据,已经实现了很大的计算和分析。实验结果表明,通过该快速Curvelet变换算法校正的图像不仅可以产生最高的峰信噪比值(PSNR = 33.803),而且可以获得最佳的视觉质量。

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