CodedStereo: Learned Phase Masks for Large Depth-of-field Stereo

Shiyu Tan¹*    Yicheng Wu¹*    Shoou-I Yu²    Ashok Veeraraghavan¹

¹Rice University   ²Facebook Reality Labs   *co-first author

 

Abstract: Conventional stereo suffers from a fundamental trade-off between imaging volume and signal-to-noise ratio (SNR) — due to the conflicting impact of aperture size on both these variables. Inspired by the extended depth of field cameras, we propose a novel end-to-end learning-based technique to overcome this limitation, by introducing a phase mask at the aperture plane of the cameras in a stereo imaging system. The phase mask creates a depth-dependent point spread function, allowing us to recover sharp image texture and stereo correspondence over a significantly extended depth of field (EDOF) than conventional stereo. The phase mask pattern, the EDOF image reconstruction, and the stereo disparity estimation are all trained together using an end-to-end learned deep neural network. We perform theoretical analysis and characterization of the proposed approach and show a 6x increase in volume that can be imaged in simulation. We also build an experimental prototype and validate the approach using real-world results acquired using this prototype system.

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End-to-end learning framework.
The phase mask, the RGB reconstruction, and the disparity prediction are jointly optimized.
CodedStereo outperforms conventional designs in a high-quality reconstruction with clear details and sharp edges.