Encoding neural networks to compute the atmospheric point spread function

Bin Cong
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引用次数: 12

Abstract

Images of the Earth's surface acquired by a high-altitude aircraft or satellites are degraded by the intervening atmosphere. The imaging instrument records not only the signal of the targeted viewing area but also the radiance scattered into the field of view in the near by area. This effect can be characterized by an atmospheric point spread function (PSF). There are many parameters that may affect the PSF. To restore noisy-blurred images, one must understand which parameters influence the PSF and to what degree. This is very important for scientific applications that seek to extract information about environmental systems. In this paper, a design and implementation of a distributed representation scheme and neural networks are presented in order to estimate the atmospheric PSF. The representation scheme exemplifies the conjunctive coding and coarse coding techniques. Neural networks trained using such an appropriately structured representation generate a desired approximation of the PSF with satisfactory processing time.
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编码神经网络计算大气点扩散函数
由高空飞机或卫星获得的地球表面图像因中间的大气而退化。成像仪器不仅记录目标观测区域的信号,而且记录附近区域散射到视场中的辐射。这种效应可以用大气点扩散函数(PSF)来表征。有许多参数可能会影响PSF。为了恢复噪声模糊的图像,必须了解哪些参数影响PSF以及影响到什么程度。这对于寻求提取环境系统信息的科学应用非常重要。本文提出了一种用于大气PSF估计的分布式表示方案和神经网络的设计与实现。该表示方案体现了连接编码和粗编码技术。使用这种适当的结构化表示来训练的神经网络可以在令人满意的处理时间内生成所需的PSF近似值。
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