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学习用于扩展景深成像的波前编码

Learning Wavefront Coding for Extended Depth of Field Imaging.

作者信息

Akpinar Ugur, Sahin Erdem, Meem Monjurul, Menon Rajesh, Gotchev Atanas

出版信息

IEEE Trans Image Process. 2021;30:3307-3320. doi: 10.1109/TIP.2021.3060166. Epub 2021 Mar 3.

Abstract

Depth of field is an important factor of imaging systems that highly affects the quality of the acquired spatial information. Extended depth of field (EDoF) imaging is a challenging ill-posed problem and has been extensively addressed in the literature. We propose a computational imaging approach for EDoF, where we employ wavefront coding via a diffractive optical element (DOE) and we achieve deblurring through a convolutional neural network. Thanks to the end-to-end differentiable modeling of optical image formation and computational post-processing, we jointly optimize the optical design, i.e., DOE, and the deblurring through standard gradient descent methods. Based on the properties of the underlying refractive lens and the desired EDoF range, we provide an analytical expression for the search space of the DOE, which is instrumental in the convergence of the end-to-end network. We achieve superior EDoF imaging performance compared to the state of the art, where we demonstrate results with minimal artifacts in various scenarios, including deep 3D scenes and broadband imaging.

摘要

景深是成像系统的一个重要因素,它对所获取空间信息的质量有很大影响。扩展景深(EDoF)成像是一个具有挑战性的不适定问题,并且在文献中已经得到了广泛的探讨。我们提出了一种用于EDoF的计算成像方法,其中我们通过衍射光学元件(DOE)采用波前编码,并通过卷积神经网络实现去模糊。由于光学图像形成和计算后处理的端到端可微建模,我们通过标准梯度下降方法联合优化光学设计,即DOE和去模糊。基于底层折射透镜的特性和所需的EDoF范围,我们给出了DOE搜索空间的解析表达式,这有助于端到端网络的收敛。与现有技术相比,我们实现了卓越的EDoF成像性能,我们在各种场景中展示了具有最小伪影的结果,包括深度3D场景和宽带成像。

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