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RESTORATION TECHNIQUE FOR PLEIADES-HR PANCHROMATIC IMAGES

机译:Pleiades-HR Panchromatic图像的恢复技术

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Pleiades-HR is a high resolution remote sensing system developed by the French Space Agency (CNES) that was launched on the 17th of December 2011 from Kourou Space Centre, French Guyana. Like others high resolution optical satellites, it acquires both panchromatic images, with 70cm spatial resolution, and lower resolution multispectral images with 2.8m spatial resolution. Pleiades-HR is an optimized system, which means that the Modulation Transfer Function has a low value at Nyquist frequency, in order to reduce both the telescope diameter and aliasing effects. Shannon sampling condition is thus met at first order, which also makes classical ground processing, such as image matching or resampling, more justified for a mathematical point of view. Raw images are thus blurry which implies a deconvolution stage that restores sharpness but also increases the noise level in the high frequency domain. A denoising step, based upon wavelet packet coefficients thresholding/shrinkage technique, allows controlling the final noise level. Each of these methods includes numerous parameters that have to be assessed during the inflight commissioning period: deconvolution filter that depends on MTF assessment, instrumental noise model, noise level target for denoised images, wavelet packet decomposition level. This paper aims to precisely describe the deconvolution/denoising algorithms and how their main parameters have been set up during the inflight commissioning stage. Special attention will be given to structured noise induced by Pleiades-HR on board wavelet-based compression algorithm.
机译:昴-HR是一种高分辨率遥感用一个从库鲁航天中心,法属圭亚那17日发布2011年12月的法国航天局(CNES)开发的系统。像其他高分辨率光学卫星,它获取两个全色图像,与70厘米空间分辨率,并用2.8米空间分辨率低的分辨率的多光谱图像。昴-HR是一个优化的系统中,这意味着该调制传递函数具有奈奎斯特频率低的值,以便减少所述望远镜直径和混叠效应两者。从而Shannon采样条件被满足在第一阶,这也使得经典地处理,诸如图像匹配或重新取样,对于数学的角度来看更合理的。原始图像是模糊因此这意味着去卷积阶段,恢复锐度但同时也增加在高频域中的噪声电平。去噪步骤,基于小波包系数阈值化/收缩技术,允许控制最终的噪声电平。这些方法各自包括具有飞动调试期间进行评估许多参数:去卷积滤波器依赖于MTF评估,仪器的噪声模型,噪声电平为目标图像去噪,小波包分解级别。本文旨在准确描述反卷积/降噪算法,以及如何在飞行调试阶段他们的主要参数已经成立。特别注意将给予在基于小波板压缩算法了结构噪音引起的昴-HR。

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