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Transfer-learning enabled micro-expression recognition using dense connections and mixed attention
ID
Gan, Chenquan
(
Author
),
ID
Xiao, Junhao
(
Author
),
ID
Zhu, Qingyi
(
Author
),
ID
Jain, Deepak Kumar
(
Author
),
ID
Štruc, Vitomir
(
Author
)
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MD5: F5B5619A288B2DF4085475C5E4320F78
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https://www.sciencedirect.com/science/article/pii/S0950705124012747
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Abstract
Micro-expression recognition (MER) is a challenging computer vision problem, where the limited amount of available training data and insufficient intensity of the facial expressions are among the main issues adversely affecting the performance of existing recognition models. To address these challenges, this paper explores a transfer–learning enabled MER model using a densely connected feature extraction module with mixed attention. Unlike previous works that utilize transfer learning to facilitate MER and extract local facialexpression information, our model relies on pretraining with three diverse macro-expression datasets and, as a result, can: ▫$(i)$▫ overcome the problem of insufficient sample size and limited training data availability, ▫$(ii)$▫ leverage (related) domain-specific information from multiple datasets with diverse characteristics, and ▫$(iii)$▫ improve the model adaptability to complex scenes. Furthermore, to enhance the intensity of the microexpressions and improve the discriminability of the extracted features, the Euler video magnification (EVM) method is adopted in the preprocessing stage and then used jointly with a densely connected feature extraction module and a mixed attention mechanism to derive expressive feature representations for the classification procedure. The proposed feature extraction mechanism not only guarantees the integrity of the extracted features but also efficiently captures local texture cues by aggregating the most salient information from the generated feature maps, which is key for the MER task. The experimental results on multiple datasets demonstrate the robustness and effectiveness of our model compared to the state-of-the-art.
Language:
English
Keywords:
computer vision
,
deep learning
,
expression recognition
,
microexpressions
Work type:
Article
Typology:
1.01 - Original Scientific Article
Organization:
FE - Faculty of Electrical Engineering
Publication status:
Published
Publication version:
Version of Record
Year:
2024
Number of pages:
14 str.
Numbering:
Vol. 305, art. 112640
PID:
20.500.12556/RUL-164607
UDC:
004.93
ISSN on article:
1872-7409
DOI:
10.1016/j.knosys.2024.112640
COBISS.SI-ID:
213732355
Publication date in RUL:
05.11.2024
Views:
72
Downloads:
46
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Record is a part of a journal
Title:
Knowledge-based systems
Publisher:
Elsevier BV
ISSN:
1872-7409
COBISS.SI-ID:
152275459
Licences
License:
CC BY 4.0, Creative Commons Attribution 4.0 International
Link:
http://creativecommons.org/licenses/by/4.0/
Description:
This is the standard Creative Commons license that gives others maximum freedom to do what they want with the work as long as they credit the author.
Secondary language
Language:
Slovenian
Keywords:
računalniški vid
,
globoko učenje
,
razpoznavanje mimike
,
mikro izrazi
Projects
Funder:
Other - Other funder or multiple funders
Project number:
AB24010317
Name:
Guangxi Science and Technology Project
Funder:
ARIS - Slovenian Research and Innovation Agency
Project number:
P2-0250
Name:
Metrologija in biometrični sistemi
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