Leveraging on recent advances in robust matrix decomposition, we revisit Lambertian photometric stereo as a robust low-rank matrix recovery problem with both missing and corrupted entries, tailoring Grasta and R-GoDec to normal surface estimation. A method to automatically detect shadows is proposed. The performance of different robust matrix completion techniques are analyzed on the challenging DiLiGenT datasets.

A Matrix Decomposition Perspective on Calibrated Photometric Stereo

MAGRI, LUCA
;
Toldo, Roberto;Castellani, Umberto;
2017-01-01

Abstract

Leveraging on recent advances in robust matrix decomposition, we revisit Lambertian photometric stereo as a robust low-rank matrix recovery problem with both missing and corrupted entries, tailoring Grasta and R-GoDec to normal surface estimation. A method to automatically detect shadows is proposed. The performance of different robust matrix completion techniques are analyzed on the challenging DiLiGenT datasets.
2017
978-3-319-68559-5
Computer Vision, Photometric Stereo, Matrix factorization
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11562/976963
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