Identification of generalized self-similar principal components of single image for image filtering and pattern decomposition

Q. Cheng
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引用次数: 1

Abstract

Scale and resolution are critical parameters in utilization of any maps including remotely sensed imagery. With information techniques such as image processing and GIS software, digital images can be easily visualized at multiple scales. Due to the dimensional property (fractality) of objects on the ground or the dimensional properties (multifractalities) of mixing objects, the changing regularities of image patterns observed at different scales or resolutions can be quantified in terms of self- similarity or generalized self-similarity. A newly developed method is introduced for identifying self-similar principal components from a single image so that self-similar components can be utilized for purposes of image filtering and image decomposing. The self-similarity of principal components introduced in this paper is characterized by power-law relations observed from the frequency distributions of the eigenvalues or eigenvectors calculated from a single image. Different groups of self-similar components can be identified and used for image decomposing. The case study for validation is chosen from a DEM at 30 meter resolution in the Greater Toronto Area,Canada.
单幅图像广义自相似主成分的识别,用于图像滤波和模式分解
比例尺和分辨率是包括遥感影像在内的任何地图利用的关键参数。利用图像处理和地理信息系统软件等信息技术,数字图像可以很容易地在多个尺度上可视化。由于地面物体的维数特性(分形)或混合物体的维数特性(多重分形),可以用自相似或广义自相似来量化在不同尺度或分辨率下观测到的图像模式的变化规律。提出了一种从单幅图像中识别自相似主成分的新方法,使自相似主成分能够用于图像滤波和图像分解。本文引入的主成分的自相似性是用幂律关系来表征的,幂律关系是从单幅图像计算的特征值或特征向量的频率分布中观察到的。不同组的自相似分量可以被识别并用于图像分解。验证的案例研究是从加拿大大多伦多地区30米分辨率的DEM中选择的。
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