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Lightweight Deep Learning Architecture for MPI Correction and Transient Reconstruction

2021-11-29 09:31:35
Adriano Simonetto, Gianluca Agresti, Pietro Zanuttigh, Henrik Schäfer

Abstract

Indirect Time-of-Flight cameras (iToF) are low-cost devices that provide depth images at an interactive frame rate. However, they are affected by different error sources, with the spotlight taken by Multi-Path Interference (MPI), a key challenge for this technology. Common data-driven approaches tend to focus on a direct estimation of the output depth values, ignoring the underlying transient propagation of the light in the scene. In this work instead, we propose a very compact architecture, leveraging on the direct-global subdivision of transient information for the removal of MPI and for the reconstruction of the transient information itself. The proposed model reaches state-of-the-art MPI correction performances both on synthetic and real data and proves to be very competitive also at extreme levels of noise; at the same time, it also makes a step towards reconstructing transient information from multi-frequency iToF data.

Abstract (translated)

URL

https://arxiv.org/abs/2111.14396

PDF

https://arxiv.org/pdf/2111.14396.pdf


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