Estimating temperatures with low-cost infrared cameras using deep neural
networks
- URL: http://arxiv.org/abs/2307.12130v2
- Date: Sun, 14 Jan 2024 19:53:23 GMT
- Title: Estimating temperatures with low-cost infrared cameras using deep neural
networks
- Authors: Navot Oz, Nir Sochen, David Mendelovich, Iftach Klapp
- Abstract summary: A nonuniformity simulator that accounts for the ambient temperature was developed.
An end-to-end neural network that incorporates both the physical model of the camera and the ambient camera temperature was introduced.
- Score: 0.0
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Low-cost thermal cameras are inaccurate (usually $\pm 3^\circ C$) and have
space-variant nonuniformity across their detector. Both inaccuracy and
nonuniformity are dependent on the ambient temperature of the camera. The goal
of this work was to estimate temperatures with low-cost infrared cameras, and
rectify the nonuniformity.
A nonuniformity simulator that accounts for the ambient temperature was
developed. An end-to-end neural network that incorporates both the physical
model of the camera and the ambient camera temperature was introduced. The
neural network was trained with the simulated nonuniformity data to estimate
the object's temperature and correct the nonuniformity, using only a single
image and the ambient temperature measured by the camera itself. Results of the
proposed method significantly improved the mean temperature error compared to
previous works by up to $0.5^\circ C$. In addition, constraining the physical
model of the camera with the network lowered the error by an additional
$0.1^\circ C$.
The mean temperature error over an extensive validation dataset was
$0.37^\circ C$. The method was verified on real data in the field and produced
equivalent results.
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