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Picking out the bad apples: unsupervised biometric data filtering for refined age estimation (CROSBI ID 313949)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Bešenić, Krešimir ; Ahlberg, Jörgen ; Pandžić, Igor S. Picking out the bad apples: unsupervised biometric data filtering for refined age estimation // The visual computer, 39 (2022), 219-237. doi: 10.1007/s00371-021-02323-y

Podaci o odgovornosti

Bešenić, Krešimir ; Ahlberg, Jörgen ; Pandžić, Igor S.

engleski

Picking out the bad apples: unsupervised biometric data filtering for refined age estimation

Introduction of large training datasets was essential for the recent advancement and success of deep learning methods. Due to the difficulties related to biometric data collection, facial image datasets with biometric trait labels are scarce and usually limited in terms of size and sample diversity. Web-scraping approaches for automatic data collection can produce large amounts of weakly labeled and noisy data. This work is focused on picking out the bad apples from web- scraped facial datasets by automatically removing erroneous samples that impair their usability. The unsupervised facial biometric data filtering method presented in this work greatly reduces label noise levels in web-scraped facial biometric data. Experiments on two large state-of-the-art web-scraped datasets demonstrate the effectiveness of the proposed method with respect to real and apparent age estimation based on five different age estimation methods. Furthermore, we apply the proposed method, together with a newly devised strategy for merging multiple datasets, to data collected from three major web-based data sources (i.e., IMDb, Wikipedia, Google) and derive the new Biometrically Filtered Famous Figure Dataset or B3FD. The proposed dataset, which is made publicly available, enables considerable performance gains for all tested age estimation methods and age estimation tasks. This work highlights the importance of training data quality compared to data quantity and selection of the estimation method.

Filtering · Biometric · Unsupervised, Web scraping, Age estimation, Dataset design

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Podaci o izdanju

39

2022.

219-237

objavljeno

0178-2789

10.1007/s00371-021-02323-y

Trošak objave rada u otvorenom pristupu

APC

Povezanost rada

Informacijske i komunikacijske znanosti, Računarstvo

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