상세 보기
- Seong Baekcheon;
- 김인경;
- Moon Taegyun;
- Ranathunga Malith;
- Kim Daesuk;
- 외 1명
WEB OF SCIENCE
0초록
Quantitative differential phase-contrast (DPC) microscopy produces phase images of transparent objects based on a number of intensity images. To reconstruct the phase, in DPC microscopy, a linearized model for weakly scatte-ring objects is considered; this limits the range of objects to be imaged, and requires additional measurements and complicated algorithms to correct for system aberrations. Here, we present a self-calibrated DPC microscope using an untrained neural network (UNN), which incorporates the nonlinear image formation model. Our method alleviates the restrictions on the object to be imaged and simulta-neously reconstructs the complex object information and aberrations, without any training dataset. We demonstrate the viability of UNN-DPC microscopy through both numeri-cal simulations and LED microscope-based experiments. & COPY; 2023 Optica Publishing Group
- 제목
- Untrained deep learning-based differential phase-contrast microscopy
- 저자
- Seong Baekcheon; 김인경; Moon Taegyun; Ranathunga Malith; Kim Daesuk; Joo Chulmin
- 발행일
- 2023-07
- 저널명
- Optics Letters
- 권
- 48
- 호
- 13
- 페이지
- 3607 ~ 3610