Iterative Optimization of Pseudo Ground-Truth Face Image Quality Labels
- URL: http://arxiv.org/abs/2208.14683v1
- Date: Wed, 31 Aug 2022 08:24:09 GMT
- Title: Iterative Optimization of Pseudo Ground-Truth Face Image Quality Labels
- Authors: \v{Z}iga Babnik, Vitomir \v{S}truc
- Abstract summary: Face image quality assessment (FIQA) techniques provide sample quality information that can be used to reject poor quality data.
We propose a quality label optimization approach, which incorporates sample-quality information from mated-pair similarities into quality predictions.
We evaluate the proposed approach using three state-of-the-art FIQA methods over three diverse datasets.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: While recent face recognition (FR) systems achieve excellent results in many
deployment scenarios, their performance in challenging real-world settings is
still under question. For this reason, face image quality assessment (FIQA)
techniques aim to support FR systems, by providing them with sample quality
information that can be used to reject poor quality data unsuitable for
recognition purposes. Several groups of FIQA methods relying on different
concepts have been proposed in the literature, all of which can be used for
generating quality scores of facial images that can serve as pseudo
ground-truth (quality) labels and can be exploited for training
(regression-based) quality estimation models. Several FIQA appro\-aches show
that a significant amount of sample-quality information can be extracted from
mated similarity-score distributions generated with some face matcher. Based on
this insight, we propose in this paper a quality label optimization approach,
which incorporates sample-quality information from mated-pair similarities into
quality predictions of existing off-the-shelf FIQA techniques. We evaluate the
proposed approach using three state-of-the-art FIQA methods over three diverse
datasets. The results of our experiments show that the proposed optimization
procedure heavily depends on the number of executed optimization iterations. At
ten iterations, the approach seems to perform the best, consistently
outperforming the base quality scores of the three FIQA methods, chosen for the
experiments.
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