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Kernel principal component and maximum autocorrelation factor analyses for change detection

机译:变量检测的核主成分和最大自相关因子分析

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摘要

Principal component analysis (PCA) has often been used to detect change over time in remotely sensed images. A commonly used technique consists of finding the projections along the eigenvectors for data consisting of pair-wise (perhaps generalized) differences between corresponding spectral bands covering the same geographical region acquired at two different time points. In this paper kernel versions of the principal component and maximum autocorrelation factor (MAF) transformations are used to carry out the analysis. An example is based on bi-temporal Landsat-5 TM imagery over irrigation fields in Nevada acquired on successive passes of the Landsat-5 satellite in August-September 1991. The six-band images (the thermal band is omitted) with 1,000 by 1,000 28.5 m pixels were first processed with the iteratively re-weighted MAD (IR-MAD) algorithm in order to discriminate change. Then the MAD image was post-processed with both ordinary and kernel versions of PCA and MAF analysis. Kernel MAF suppresses the noisy no-change background much more successfully than ordinary MAF. The ratio between variances of the ordinary MAF 1 and the kernel MAF 1 (both scaled to unit variance) calculated in a no-change region of the images is 140 corresponding to 21.5 dB. Kernel MAF analysis also outperforms both linear and kernel PCA here (not shown).
机译:主成分分析(PCA)通常用于检测遥感图像随时间的变化。常用的技术包括沿着特征向量找到投影的投影,该投影由在两个不同时间点获取的覆盖同一地理区域的对应光谱带之间的成对(可能是广义的)差异组成。在本文中,使用主成分和最大自相关因子(MAF)转换的内核版本来进行分析。一个例子是基于1991年8月至9月连续通过Landsat-5卫星获得的内华达州灌溉田地的双时Landsat-5 TM图像。六波段图像(省略了热波段),其中1,000 x 1,000为了区分变化,首先使用迭代重新加权MAD(IR-MAD)算法处理了28.5 m像素。然后,使用PCA和MAF分析的普通版和内核版对MAD图像进行后处理。内核MAF比普通MAF更成功地抑制了嘈杂的无变化背景。在图像的无变化区域中计算的普通MAF 1和内核MAF 1的方差之比(均按比例缩放至单位方差)为140,对应于21.5 dB。此处的内核MAF分析的性能也优于线性和内核PCA(未显示)。

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