IVCVApr 5, 2024

Deep Phase Coded Image Prior

arXiv:2404.03906v21 citationsh-index: 4ICCP
Originality Highly original
AI Analysis

This enables zero-shot computational imaging for tasks like passive depth estimation, overcoming the barrier of acquiring ground-truth data for new phase-coded systems.

The paper tackles the problem of depth estimation and all-in-focus image recovery from phase-coded images without requiring training datasets, achieving results that surpass prior supervised techniques using the same imaging system.

Phase-coded imaging is a computational imaging method designed to tackle tasks such as passive depth estimation and extended depth of field (EDOF) using depth cues inserted during image capture. Most of the current deep learning-based methods for depth estimation or all-in-focus imaging require a training dataset with high-quality depth maps and an optimal focus point at infinity for all-in-focus images. Such datasets are difficult to create, usually synthetic, and require external graphic programs. We propose a new method named "Deep Phase Coded Image Prior" (DPCIP) for jointly recovering the depth map and all-in-focus image from a coded-phase image using solely the captured image and the optical information of the imaging system. Our approach does not depend on any specific dataset and surpasses prior supervised techniques utilizing the same imaging system. This improvement is achieved through the utilization of a problem formulation based on implicit neural representation (INR) and deep image prior (DIP). Due to our zero-shot method, we overcome the barrier of acquiring accurate ground-truth data of depth maps and all-in-focus images for each new phase-coded system introduced. This allows focusing mainly on developing the imaging system, and not on ground-truth data collection.

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