首页> 外文会议>IEEE International Geoscience and Remote Sensing Symposium >A NEW PANSHARPENING METHOD USING AN EXPLICIT IMAGE FORMATION MODEL REGULARIZED VIA TOTAL VARIATION
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A NEW PANSHARPENING METHOD USING AN EXPLICIT IMAGE FORMATION MODEL REGULARIZED VIA TOTAL VARIATION

机译:一种新的Pansharpening方法,使用通过总变化正规化的显式图像形成模型

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In this paper we present a new method for the pansharpening of multi-spectral satellite imagery. This method is based on a simple explicit image formation model which leads to an ill posed problem that needs to be regularized for best results. We use both Tikhonov (ridge regression) and Total Variation (TV) regularization. We develop the solutions to these two problems and then we address the problem of selecting the optimal regularization parameter λ. We find the value of λ that minimizes Stein's unbiased risk estimate (SURE). For ridge regression this leads to an analytical expression for SURE while for the TV regularized solution we use Monte Carlo SURE where the estimate is obtained by stochastic means. Finally, we present experiment results where we use quality metrics to evaluate the spectral and spatial quality of the resulting pansharpened image.
机译:在本文中,我们为多光谱卫星图像的Pansharpening提出了一种新方法。该方法基于简单的显式图像形成模型,这导致了不需要正规化的效果以获得最佳结果。我们使用Tikhonov(Ridge回归)和总变化(电视)正则化。我们开发解决这两个问题的解决方案,然后我们解决了选择最佳正则化参数λ的问题。我们发现λ的价值最小化Stein的无偏见风险估计(肯定)。对于Ridge回归,这导致分析表达式,以肯定在电视正则化解决方案中,我们使用Monte Carlo确定通过随机手段获得的估计。最后,我们提出了实验结果,在那里我们使用质量指标来评估由此产生的粉刺图像的光谱和空间质量。

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