明确的数学结果表示和滤波的空间不变的图像序列

J. Farison, Young-In Shin, J.W.V. Miller
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引用次数: 6

摘要

定义了线性加性空间不变图像序列,并给出了描述线性加性空间不变图像序列的数学模型。在这样的序列中,所有对象在序列的每个图像中都是位置不变的,但对序列的连续图像具有不同的灰度贡献。三种重要的空间不变图像序列是函数、参数和多光谱。场景或物体的各种成分(特征或过程)对序列的每个图像都有附加的贡献,但是由于序列上的函数、参数或光谱带的变化,每个成分在图像之间都有特征变化(签名)。本文还介绍了线性滤波器的一般公式、推导和显式表达式,该滤波器称为同时对角化滤波器,它从序列中计算单个新图像,以便在过滤后的图像中强调所需的过程,并抑制任何数量的不希望的过程
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explicit mathematical results for the representation and filtering of spatially-invariant image sequences
Linearly additive spatially invariant image sequences are defined, and an explicit mathematical model for describing them is presented. In such a sequence, all objects are positionally invariant in each image of the sequence but have varying gray-scale contributions to the successive images of the sequence. Three important types of spatially invariant image sequences are functional, parametric, and multispectral. The various components (features or processes) of the scene or object contribute additively to each image of the sequence, but each component has a characteristic variation (signature) from image to image due to the variation of the function, parameter, or spectral band over the sequence. Also presented are the general formulation, derivation, and explicit expression for the linear filter, called the simultaneous-diagonalization filter, that calculates a single new image from the sequence such that a desired process is emphasized and any number of undesired processes is suppressed in the filtered image.<>
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