| 구분 |
박사학위 논문 심사 |
| 일정 |
2019-10-21(월) 10:00~11:00 |
| 세미나실 |
129동 301호 |
| 강연자 |
정승원 (서울대학교 수리과학부) |
| 담당교수 |
강명주 |
| 기타 |
|
This thesis introduces efficient and effective methods for solving monochro-
matic aberration correction problems. The proposed methods are based on
Forward-Backward proximal splitting method, which solves the optimization
problem by iteratively solving two sub parts for each step: 1. gradient descent
and 2. noise removal. Since the gradient descent part has high computational
cost, we develop a low-cost implementation of computing aberration operator
and its transpose. Then, we propose 6 different methods, which are based on
6 types of different regularization in the noise removal part. In this thesis,
we perform experiments on the proposed image restoration methods. In the
experiments, we use synthetic images generated by point spread functions
(PSFs), which emulate the effects of monochromatic aberration in modern
digital cameras.