Thin On-Sensor Nanophotonic Array Cameras

Praneeth Chakravarthula, Ji-ping Sun, Xiao Li, Chenyang Lei, Gene Chou, Mario Bijelic, Johannes Froesch, A. Majumdar, Felix Heide
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Abstract

Today's commodity camera systems rely on compound optics to map light originating from the scene to positions on the sensor where it gets recorded as an image. To record images without optical aberrations, i.e., deviations from Gauss' linear model of optics, typical lens systems introduce increasingly complex stacks of optical elements which are responsible for the height of existing commodity cameras. In this work, we investigate flat nanophotonic computational cameras as an alternative that employs an array of skewed lenslets and a learned reconstruction approach. The optical array is embedded on a metasurface that, at 700 nm height, is flat and sits on the sensor cover glass at 2.5 mm focal distance from the sensor. To tackle the highly chromatic response of a metasurface and design the array over the entire sensor, we propose a differentiable optimization method that continuously samples over the visible spectrum and factorizes the optical modulation for different incident fields into individual lenses. We reconstruct a megapixel image from our flat imager with a learned probabilistic reconstruction method that employs a generative diffusion model to sample an implicit prior. To tackle scene-dependent aberrations in broadband, we propose a method for acquiring paired captured training data in varying illumination conditions. We assess the proposed flat camera design in simulation and with an experimental prototype, validating that the method is capable of recovering images from diverse scenes in broadband with a single nanophotonic layer.
薄型传感器上纳米光子阵列相机
当今的商品相机系统依靠复合光学元件将来自场景的光线映射到传感器上的各个位置,并将其记录为图像。为了记录没有光学像差的图像,即偏离高斯线性光学模型的图像,典型的镜头系统引入了越来越复杂的光学元件堆栈,这就是现有商品相机高度的原因。在这项工作中,我们研究了平面纳米光子计算相机,将其作为一种采用倾斜小透镜阵列和学习重建方法的替代方案。光学阵列嵌入在一个高度为 700 纳米的元表面上,该表面是平面的,位于传感器盖板玻璃上,与传感器的焦距为 2.5 毫米。为了解决元表面的高色度响应问题,并在整个传感器上设计阵列,我们提出了一种可微分的优化方法,该方法可对可见光谱进行连续采样,并将不同入射场的光学调制因数分解为单个透镜。我们使用学习概率重建方法从平面成像仪中重建百万像素图像,该方法采用生成扩散模型对隐含先验进行采样。为了解决宽带中与场景相关的像差问题,我们提出了一种在不同光照条件下获取配对捕捉训练数据的方法。我们在模拟和实验原型中评估了拟议的平面相机设计,验证了该方法能够通过单个纳米光子层在宽带中恢复不同场景的图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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