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Laurent Beslay

Researcher at International Practical Shooting Confederation

Publications -  26
Citations -  507

Laurent Beslay is an academic researcher from International Practical Shooting Confederation. The author has contributed to research in topics: Fingerprint (computing) & Fingerprint recognition. The author has an hindex of 9, co-authored 24 publications receiving 308 citations.

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The right to data portability in the GDPR: Towards user-centric interoperability of digital services

TL;DR: The aim of this article is to propose a first systematic interpretation of this new right, by suggesting a pragmatic and extensive approach, particularly taking advantage as much as possible of the interrelationship that this new legal provision can have with regard to the Digital Single Market and the fundamental rights of digital users.
Proceedings ArticleDOI

FaceQnet: Quality Assessment for Face Recognition based on Deep Learning

TL;DR: A Quality Assessment approach for face recognition based on deep learning that employs an existing ICAO compliance framework and a pretrained CNN to automatically label data with quality information and shows that the predictions from FaceQnet are highly correlated with the face recognition accuracy of a state-of-the-art commercial system not used during development.
Posted Content

Biometric Quality: Review and Application to Face Recognition with FaceQnet

TL;DR: FaceQnet is a novel opensource face quality assessment tool, inspired and powered by deep learning technology, which assigns a scalar quality measure to facial images, as prediction of their recognition accuracy.
Journal ArticleDOI

A Study of Age and Ageing in Fingerprint Biometrics

TL;DR: This paper addresses a key problem in the fingerprint modality based on a database of over 400K impressions coming from more than 250K different fingers, which was acquired under real operational conditions and contains fingerprints from subjects aged 0–25 and 65–98 years.
Posted Content

FaceQnet: Quality Assessment for Face Recognition based on Deep Learning

TL;DR: In this paper, a quality assessment approach for face recognition based on deep learning is proposed, which employs the BioLab-ICAO framework for labeling the VGGFace2 images with quality information related to their ICAO compliance level.