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2015-02-23
A Note on DAS's PCA in Online Phases
By
, Vol. 51, 117-118, 2015
Abstract
PCA was effective and helpful in developing a classification system. However, it was inappropriate to perform two independent PCA models on ground truth images and query image, which was described in Figure 1 in Reference ``BRAIN MR IMAGE CLASSIFICATION USING MULTISCALE GEOMETRIC ANALYSIS OF RIPPLET, Progress in Electromagnetics Research, 137, 1-17, 2013''. In this note, we analyze the reason and revise Figure 1.
Citation
Yudong Zhang, Shuihua Wang, Genlin Ji, and Jie Yan, "A Note on DAS's PCA in Online Phases," , Vol. 51, 117-118, 2015.
doi:10.2528/PIERL15012108
References

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