Abstract
We explore an active illumination approach for remote and obscured
material recognition, based on quantum parametric mode sorting and
single-photon detection. By raster scanning a segment of material, we
capture the relationships between each mirror position’s peak
count and location. These features allow for a robust measurement of a
material’s relative reflectance and surface texture. Through
inputting these identifiers into machine learning algorithms, a high
accuracy of 99% material recognition can be achieved, even
maintaining up to 89.17% accuracy when materials are occluded
by a lossy and multi-scattering obscurant of up to 15.2 round-trip
optical depth.
Funder
U.S. Army Combat Capabilities Development
Command
Cited by
2 articles.
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