Abstract

The simple lens computational imaging method provides an alternative way to achieve high-quality photography. It simplifies the design of the optical-front-end to a single-convex-lens and delivers the correction of optical aberration to a dedicated computational restoring algorithm. Traditional single-convex-lens image restoration is based on optimization theory, which has some shortcomings in efficiency and efficacy. In this paper, we propose a novel Recursive Residual Groups network under Generative Adversarial Network framework (RRG-GAN) to generate a clear image from the aberrations-degraded blurry image. The RRG-GAN network includes dual attention module, selective kernel network module, and residual resizing module to make it more suitable for the non-uniform deblurring task. To validate the evaluation algorithm, we collect sharp/aberration-degraded datasets by CODE V simulation. To test the practical application performance, we built a display-capture lab setup and reconstruct a manual registering dataset. Relevant experimental comparisons and actual tests verify the effectiveness of our proposed method.

Highlights

  • Computational imaging is a new interdisciplinary subject in recent years, which offers imaging functionalities and convenient design beyond traditional imaging design [1]

  • The construction of simulation dataset based on CODE V software (Synopsys Corporate Headquarters, 690 East Middlefield Road Mountain View, CA, USA) is of great significance, which can provide reference for the evaluation of recovery algorithm, especially for the supervised learning method

  • All the data sets used in this paper are from MIT Adobe FiveK dataset, which is mainly used in the research of tone adjustment of deep learning method [36]

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Summary

Introduction

Computational imaging is a new interdisciplinary subject in recent years, which offers imaging functionalities and convenient design beyond traditional imaging design [1]. Optical designers systematically balance optical aberrations and design constraints (such as focal length, field of view, and distortion) They utilize a combination of several lens elements with various materials and shapes to achieve a close-to-perfect optical design, which will result in a significant impact on the cost, size, and weight. The simple lens computational imaging method provides an alternative way to achieve high-quality photography. As aberration is a common problem in many optical imaging systems, aberration correction algorithm will have great significance to improve the quality of other optical imaging systems, and has broad application prospects

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