Rapid bacteria identification using structured illumination microscopy and machine learning
Yingchuan He, Weize Xu, Yao Zhi, Rohit Tyagi, Zhe Hu, Gang Cao. Rapid bacteria identification using structured illumination microscopy and machine learning[J]. Journal of Innovative Optical Health Sciences, 2018, 11(1): 1850007.
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Yingchuan He, Weize Xu, Yao Zhi, Rohit Tyagi, Zhe Hu, Gang Cao. Rapid bacteria identification using structured illumination microscopy and machine learning[J]. Journal of Innovative Optical Health Sciences, 2018, 11(1): 1850007.