Seeing Clearly and Deeply: An RGBD Imaging Approach with a Bio-inspired Monocentric Design
Zongxi Yu, Xiaolong Qian, Shaohua Gao, Qi Jiang, Yao Gao, Kailun Yang, Kaiwei Wang

TL;DR
This paper introduces a bio-inspired monocentric lens system combined with a co-designed reconstruction network to achieve high-quality RGBD imaging, outperforming existing methods in depth accuracy and image fidelity.
Contribution
The work presents a novel all-spherical monocentric lens design and a joint optical-software framework for superior RGBD imaging without complex optics.
Findings
Achieves state-of-the-art depth estimation accuracy with Abs Rel of 0.026
Attains high image quality with SSIM of 0.960 and LPIPS of 0.082
Outperforms existing software-only and deep optics systems in experiments.
Abstract
Achieving high-fidelity, compact RGBD imaging presents a dual challenge: conventional compact optics struggle with RGB sharpness across the entire depth-of-field, while software-only Monocular Depth Estimation (MDE) is an ill-posed problem reliant on unreliable semantic priors. While deep optics with elements like DOEs can encode depth, they introduce trade-offs in fabrication complexity and chromatic aberrations, compromising simplicity. To address this, we first introduce a novel bio-inspired all-spherical monocentric lens, around which we build the Bionic Monocentric Imaging (BMI) framework, a holistic co-design. This optical design naturally encodes depth into its depth-varying Point Spread Functions (PSFs) without requiring complex diffractive or freeform elements. We establish a rigorous physically-based forward model to generate a synthetic dataset by precisely simulating the…
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