Transient motion classification through turbid volumes via parallelized
single-photon detection and deep contrastive embedding
- URL: http://arxiv.org/abs/2204.01733v1
- Date: Mon, 4 Apr 2022 14:27:36 GMT
- Title: Transient motion classification through turbid volumes via parallelized
single-photon detection and deep contrastive embedding
- Authors: Shiqi Xu, Wenhui Liu, Xi Yang, Joakim J\"onsson, Ruobing Qian, Paul
McKee, Kanghyun Kim, Pavan Chandra Konda, Kevin C. Zhou, Lucas Krei{\ss},
Haoqian Wang, Edouard Berrocal, Scott Huettel, Roarke Horstmeyer
- Abstract summary: We propose a technique termed Classifying Rapid decorrelation Events via Parallelized single photon dEtection (CREPE).
It can probe and classify different decorrelating movements hidden underneath turbid volume with high sensitivity using parallelized speckle from a $32times32 pixel SPAD array.
This has the potential to be applied to monitor normally deep tissue motion patterns, for example identifying abnormal cerebral blood flow events.
- Score: 12.806431481376787
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Fast noninvasive probing of spatially varying decorrelating events, such as
cerebral blood flow beneath the human skull, is an essential task in various
scientific and clinical settings. One of the primary optical techniques used is
diffuse correlation spectroscopy (DCS), whose classical implementation uses a
single or few single-photon detectors, resulting in poor spatial localization
accuracy and relatively low temporal resolution. Here, we propose a technique
termed Classifying Rapid decorrelation Events via Parallelized single photon
dEtection (CREPE)}, a new form of DCS that can probe and classify different
decorrelating movements hidden underneath turbid volume with high sensitivity
using parallelized speckle detection from a $32\times32$ pixel SPAD array. We
evaluate our setup by classifying different spatiotemporal-decorrelating
patterns hidden beneath a 5mm tissue-like phantom made with rapidly
decorrelating dynamic scattering media. Twelve multi-mode fibers are used to
collect scattered light from different positions on the surface of the tissue
phantom. To validate our setup, we generate perturbed decorrelation patterns by
both a digital micromirror device (DMD) modulated at multi-kilo-hertz rates, as
well as a vessel phantom containing flowing fluid. Along with a deep
contrastive learning algorithm that outperforms classic unsupervised learning
methods, we demonstrate our approach can accurately detect and classify
different transient decorrelation events (happening in 0.1-0.4s) underneath
turbid scattering media, without any data labeling. This has the potential to
be applied to noninvasively monitor deep tissue motion patterns, for example
identifying normal or abnormal cerebral blood flow events, at multi-Hertz rates
within a compact and static detection probe.
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