Improving principal component analysis based phase extraction method for phase-shifting interferometry by integrating spatial information

Kohei Yatabe, Kenji Ishikawa, Yasuhiro Oikawa

    研究成果: Article

    28 引用 (Scopus)

    抄録

    Phase extraction methods based on the principal component analysis (PCA) can extract objective phase from phase-shifted fringes without any prior knowledge about their shift steps. Although it is fast and easy to implement, many fringe images are needed for extracting the phase accurately from noisy fringes. In this paper, a simple extension of the PCA method for reducing extraction error is proposed. It can effectively reduce influence from random noise, while most of the advantages of the PCA method is inherited because it only modifies the construction process of the data matrix from fringes. Although it takes more time because size of the data matrix to be decomposed is larger, computational time of the proposed method is shown to be reasonably fast by using the iterative singular value decomposition algorithm. Numerical experiments confirmed that the proposed method can reduce extraction error even when the number of interferograms is small.

    元の言語English
    ページ(範囲)22881-22891
    ページ数11
    ジャーナルOptics Express
    24
    発行部数20
    DOI
    出版物ステータスPublished - 2016 10 3

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    principal components analysis
    interferometry
    matrices
    random noise
    decomposition
    shift

    ASJC Scopus subject areas

    • Atomic and Molecular Physics, and Optics

    これを引用

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