Deep learning enhanced mobile-phone microscopy

12 Dec 2017Yair RivensonHatice Ceylan KoydemirHongda WangZhensong WeiZhengshuang RenHarun GunaydinYibo ZhangZoltan GorocsKyle LiangDerek TsengAydogan Ozcan

Mobile-phones have facilitated the creation of field-portable, cost-effective imaging and sensing technologies that approach laboratory-grade instrument performance. However, the optical imaging interfaces of mobile-phones are not designed for microscopy and produce spatial and spectral distortions in imaging microscopic specimens... (read more)

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