The 80th JSAP Autumn Meeting 2019

Presentation information

Oral presentation

Code-sharing session » 【CS.1】 Code-sharing Session 3.3 & 4.4

[18p-E215-1~9] 【CS.1】 Code-sharing Session 3.3 & 4.4

Wed. Sep 18, 2019 1:15 PM - 4:15 PM E215 (E215)

Ryoichi Horisaki(Osaka Univ.), Hirotsugu Yamamoto(Utsunomiya Univ.)

3:45 PM - 4:00 PM

[18p-E215-8] Starting points generation for freeform reflective imaging system design using neural network based deep-learning

Tong Yang1, Dewen Cheng1, Yongtian Wang1 (1.School of Optics and Photonics, Beijing Institute of Technology)

Keywords:machine learning, freeform imaging system, neural network

Using freeform optical surfaces is a revolution in the field of imaging system design. Such systems have important applications in the area of virtual reality and augmented reality, light-field and high-performance cameras, microscopy, spectroscopy, and other applied physics researches. We propose a framework of starting points generation for freeform reflective imaging systems using back-propagation neural network based deep-learning. Good starting points of specific system specifications for optimization can be generated immediately using the network. The amount of time and human effort as well as the dependence on advanced design skills reduce significantly.