Deep lens optimization has recently emerged as a new paradigm for designing computational imaging systems, however it has been limited to either simple optical systems consisting of a single DOE or metalens, or the fine-tuning of compound lenses from good initial designs. Here we present a deep lens design method based on curriculum learning, which is able to learn optical designs of compound lenses ab initio from randomly initialized surfaces, therefore overcoming the need for a good initial design. We demonstrate this approach with the fully-automatic design of an extended depth-of-field computational camera in a cellphone-style form factor, highly aspherical surfaces, and a short back focal length.
翻译:深海透镜优化最近成为设计计算成像系统的新范例,但仅限于由单一指定经营实体或金属组成的简单光学系统,或从良好的初始设计中微调复合透镜。在这里,我们展示了基于课程学习的深透镜设计方法,该方法能够从随机初始表面开始学习复合透镜的光学设计,从而克服了对良好初始设计的需求。我们展示了这一方法,即完全自动地设计一个以手机形式成型、高度球状表面和短后焦距组成的远距离深距离计算相机。