Object classification through scattering media with deep learning on time resolved measurement

© 2017 Optical Society of America. We demonstrate an imaging technique that allows identification and classification of objects hidden behind scattering media and is invariant to changes in calibration parameters within a training range. Traditional techniques to image through scattering solve an in...

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Bibliographic Details
Main Authors: Satat, Guy, Tancik, Matthew, Gupta, Otkrist, Heshmat, Barmak, Raskar, Ramesh
Other Authors: Massachusetts Institute of Technology. Media Laboratory
Format: Article
Language:English
Published: The Optical Society 2021
Online Access:https://hdl.handle.net/1721.1/135770
Description
Summary:© 2017 Optical Society of America. We demonstrate an imaging technique that allows identification and classification of objects hidden behind scattering media and is invariant to changes in calibration parameters within a training range. Traditional techniques to image through scattering solve an inverse problem and are limited by the need to tune a forward model with multiple calibration parameters (like camera field of view, illumination position etc.). Instead of tuning a forward model and directly inverting the optical scattering, we use a data driven approach and leverage convolutional neural networks (CNN) to learn a model that is invariant to calibration parameters variations within the training range and nearly invariant beyond that. This effectively allows robust imaging through scattering conditions that is not sensitive to calibration. The CNN is trained with a large synthetic dataset generated with a Monte Carlo (MC) model that contains random realizations of major calibration parameters. The method is evaluated with a time-resolved camera and multiple experimental results are provided including pose estimation of a mannequin hidden behind a paper sheet with 23 correct classifications out of 30 tests in three poses (76.6% accuracy on real-world measurements). This approach paves the way towards real-time practical non line of sight (NLOS) imaging applications.