基于pca的相关图像组自适应层次变换

R. Kountchev, R. Kountcheva
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引用次数: 2

摘要

本文在主成分分析(PCA)的基础上,提出了一种新的相关图像组(序列)自适应层次变换(AHT)算法。在实际应用中,相关图像群是存在的。例如,多光谱图像的分量(频谱带)、计算机断层扫描图像的序列、固定空间位置的监控电视摄像机的视频序列、电视显微镜的视频信息等。新的分层变换是可逆的。它使处理后的图像组具有高度的去相关性,并保证图像组中前者的功率高度集中,称为“本征”。通过AHT实现的去相关在效率上接近“经典”PCA,但具有较低的计算复杂度。此外,AHT算法的结构非常适合并行处理。本文还给出了算法建模的一些实验结果,并将其应用于CT图像序列。比较了AHT算法与经典PCA算法的计算复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PCA-based Adaptive Hierarchical Transform for correlated image groups
In this work one new algorithm is proposed, for Adaptive Hierarchical Transform (AHT) of groups (sequences) of correlated images, based on the famous method Principal Component Analysis (PCA). The groups of correlated images exist in many practical cases. These are, for example, the components (spectrum bands) of the multispectral images, the sequences of the computer tomography images, video sequences from surveillance TV cameras with fixed spatial position, video information from TV microscopes, etc. The new Hierarchical Transform is reversible. It results in high decorrelation of the processed groups of images and ensures high power concentration in the former in the group, called “eigen”. The decorrelation, achieved through the AHT is close in efficiency to the “classic” PCA, but has lower computational complexity. Besides, the structure of the AHT algorithm is extremely suitable for parallel processing. In the paper are also given some experimental results for the algorithm modeling, applied on sequences of CT images. The computational complexity of the AHT algorithm is compared with this of the classic PCA.
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