Infrared and Laser Engineering, Volume. 45, Issue 11, 1122001(2016)

Alignment method based on peak′s sharpness degree of correlation coefficient profile of side-view images for polarization maintaining fibers

Weng Xiaoquan*, Feng Di, Huang Huaibo, and Zhao Zhengqi
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  • [in Chinese]
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    The side-view-image methods are playing important roles in the location and alignment of birefringent axes of Polarization Maintaining (PM) fibers. However, due to be restricted by light-intensity distribution characteristics, almost all of the side-view-image methods were of low applicability. In order to improve the applicability of side-view-image methods, a new alignment algorithm based on the peak′s sharpness degree of correlation coefficient profile was developed. Correlation coefficient profiles were acquired by calculating the correlation among light-intensity profiles, then the peak′s sharpness degree of correlation coefficient profiles was denoted as characteristic value. Compared with traditional side-view-image methods, the novel method was not restricted by light-intensity characteristics, so it shows excellent applicability. To improve the precision of angle orientation, alignment accuracy was measured on different observation planes in a series of experiments and the observation position with high alignment precision was acquired. Finally, the alignment precision of these position was analyzed with the help of practical experiment. According to the experiment result, alignment accuracy better than 0.9° is achieved.

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    Weng Xiaoquan, Feng Di, Huang Huaibo, Zhao Zhengqi. Alignment method based on peak′s sharpness degree of correlation coefficient profile of side-view images for polarization maintaining fibers[J]. Infrared and Laser Engineering, 2016, 45(11): 1122001

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    Paper Information

    Category: 光通信与光传感

    Received: Mar. 5, 2016

    Accepted: Apr. 15, 2016

    Published Online: Jan. 20, 2017

    The Author Email: Xiaoquan Weng (wengxq0614@163.com)

    DOI:10.3788/irla201645.1122001

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