Homogeneous Low-Resolution Face Recognition Method based Correlation
Features
- URL: http://arxiv.org/abs/2111.13175v1
- Date: Thu, 25 Nov 2021 17:11:52 GMT
- Title: Homogeneous Low-Resolution Face Recognition Method based Correlation
Features
- Authors: Xuan Zhao
- Abstract summary: Low-resolution feature of surveillance video and images makes it difficult for high-resolution face recognition algorithms to extract effective feature information.
As face recognition in security surveillance becomes more important in the era of dense urbanization, it is essential to develop algorithms that are able to provide satisfactory performance in processing the video frames generated by low-resolution surveillance cameras.
This paper study on the Correlation Features-based Face Recognition (CoFFaR) method which using for homogeneous low-resolution surveillance videos, the theory, experimental details, and experimental results are elaborated in detail.
- Score: 3.747737951407512
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Face recognition technology has been widely adopted in many mission-critical
scenarios like means of human identification, controlled admission, and mobile
device access, etc. Security surveillance is a typical scenario of face
recognition technology. Because the low-resolution feature of surveillance
video and images makes it difficult for high-resolution face recognition
algorithms to extract effective feature information, Algorithms applied to
high-resolution face recognition are difficult to migrate directly to
low-resolution situations. As face recognition in security surveillance becomes
more important in the era of dense urbanization, it is essential to develop
algorithms that are able to provide satisfactory performance in processing the
video frames generated by low-resolution surveillance cameras. This paper study
on the Correlation Features-based Face Recognition (CoFFaR) method which using
for homogeneous low-resolution surveillance videos, the theory, experimental
details, and experimental results are elaborated in detail. The experimental
results validate the effectiveness of the correlation features method that
improves the accuracy of homogeneous face recognition in surveillance security
scenarios.
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