Machine Learning Model for Complete Reconstruction of Diagnostic Polarimetric Images from partial Mueller polarimetry data
The translation of imaging Mueller polarimetry to clinical practice is often hindered by large footprint and relatively slow acquisition speed of the existing instruments. Using polarization-sensitive camera as a detector may reduce instrument dimensions and allow data streaming at video rate. Howev...
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Main Authors | , , , , , , , , , , , , , |
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Format | Journal Article |
Language | English |
Published |
19.09.2024
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Subjects | |
Online Access | Get full text |
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Summary: | The translation of imaging Mueller polarimetry to clinical practice is often
hindered by large footprint and relatively slow acquisition speed of the
existing instruments. Using polarization-sensitive camera as a detector may
reduce instrument dimensions and allow data streaming at video rate. However,
only the first three rows of a complete 4x4 Mueller matrix can be measured. To
overcome this hurdle we developed a machine learning approach using sequential
neural network algorithm for the reconstruction of missing elements of a
Mueller matrix from the measured elements of the first three rows. The
algorithm was trained and tested on the dataset of polarimetric images of
various excised human tissues (uterine cervix, colon, skin, brain) acquired
with two different imaging Mueller polarimeters operating in either reflection
(wide-field imaging system) or transmission (microscope) configurations at
different wavelengths of 550 nm and 385 nm, respectively. The reconstruction
performance was evaluated using various error metrics, all of which confirmed
low error values. The execution time of the trained neural network algorithm
was about 300 microseconds for a single image pixel. It suggests that a machine
learning approach with parallel processing of all image pixels combined with
the partial Mueller polarimeter operating at video rate can effectively
substitute for the complete Mueller polarimeter and produce accurate maps of
depolarization, linear retardance and orientation of the optical axis of
biological tissues, which can be used for medical diagnosis in clinical
settings. |
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DOI: | 10.48550/arxiv.2409.13073 |