Detail publikačního výsledku

Multi-Frame Labeled Faces Database: Towards Face Super-Resolution from Realistic Video Sequences

RAJNOHA, M.; MEZINA, A.; BURGET, R.

Originální název

Multi-Frame Labeled Faces Database: Towards Face Super-Resolution from Realistic Video Sequences

Anglický název

Multi-Frame Labeled Faces Database: Towards Face Super-Resolution from Realistic Video Sequences

Druh

Článek WoS

Originální abstrakt

Forensically trained facial reviewers are still considered as one of the most accurate approaches for person identification from video records. The human brain can utilize information, not just from a single image, but also from a sequence of images (i.e., videos), and even in the case of low-quality records or a long distance from a camera, it can accurately identify a given person. Unfortunately, in many cases, a single still image is needed. An example of such a case is a police search that is about to be announced in newspapers. This paper introduces a face database obtained from real environment counting in 17,426 sequences of images. The dataset includes persons of various races and ages and also different environments, different lighting conditions or camera device types. This paper also introduces a new multi-frame face super-resolution method and compares this method with the state-of-the-art single-frame and multi-frame super-resolution methods. We prove that the proposed method increases the quality of face images, even in cases of low-resolution low-quality input images, and provides better results than single-frame approaches that are still considered the best in this area. Quality of face images was evaluated using several objective mathematical methods, and also subjective ones, by several volunteers. The source code and the dataset were released and the experiment is fully reproducible.

Anglický abstrakt

Forensically trained facial reviewers are still considered as one of the most accurate approaches for person identification from video records. The human brain can utilize information, not just from a single image, but also from a sequence of images (i.e., videos), and even in the case of low-quality records or a long distance from a camera, it can accurately identify a given person. Unfortunately, in many cases, a single still image is needed. An example of such a case is a police search that is about to be announced in newspapers. This paper introduces a face database obtained from real environment counting in 17,426 sequences of images. The dataset includes persons of various races and ages and also different environments, different lighting conditions or camera device types. This paper also introduces a new multi-frame face super-resolution method and compares this method with the state-of-the-art single-frame and multi-frame super-resolution methods. We prove that the proposed method increases the quality of face images, even in cases of low-resolution low-quality input images, and provides better results than single-frame approaches that are still considered the best in this area. Quality of face images was evaluated using several objective mathematical methods, and also subjective ones, by several volunteers. The source code and the dataset were released and the experiment is fully reproducible.

Klíčová slova

face recognition; super resolution; multi frame; image processing; database; dataset; sequences; deep learning

Klíčová slova v angličtině

face recognition; super resolution; multi frame; image processing; database; dataset; sequences; deep learning

Autoři

RAJNOHA, M.; MEZINA, A.; BURGET, R.

Rok RIV

2021

Vydáno

16.10.2020

Nakladatel

MDPI

ISSN

2076-3417

Periodikum

Applied Sciences-Basel

Svazek

10

Číslo

20

Stát

Švýcarská konfederace

Strany od

1

Strany do

27

Strany počet

27

URL

Plný text v Digitální knihovně

BibTex

@article{BUT165621,
  author="Martin {Rajnoha} and Anzhelika {Mezina} and Radim {Burget}",
  title="Multi-Frame Labeled Faces Database: Towards Face Super-Resolution from Realistic Video Sequences",
  journal="Applied Sciences-Basel",
  year="2020",
  volume="10",
  number="20",
  pages="1--27",
  doi="10.3390/app10207213",
  url="https://www.mdpi.com/2076-3417/10/20/7213"
}