Learnable Polarization-multiplexed Modulation Imager for Depth from DefocusDownload PDFOpen Website

Published: 01 Jan 2023, Last Modified: 05 Nov 2023ICCP 2023Readers: Everyone
Abstract: Estimating depth from a single snapshot image with defocus information is still a tricky problem for the ill-posedness introduced by the limited depth cues implied in the defocus images. This paper proposes a Polarization-multiplexed Modulation Imager (PoMI) to fully utilize the multiplexed polarization channels for capturing more depth cues with a single snapshot image. The polarization-dependent modulator, i.e., Liquid Crystal Spatial Light Modulator (LC-SLM), is applied to modulate the depth information into polarization channels. A differentiable polarization-dependent modulation camera model is proposed, combined with the Polarization-Driven Attention Network, to enable the joint system optimization by end-to-end training. Extensive tests have been applied to the synthetic datasets to verify the effectiveness of the proposed method. A system prototype is built to conduct real experiments demonstrating the feasibility of the proposed method for natural scenes.
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