TY - JOUR
T1 - Unsupervised cross-database micro-expression recognition using target-adapted least-squares regression
AU - Li, Lingyan
AU - Zhou, Xiaoyan
AU - Zong, Yuan
AU - Zheng, Wenming
AU - Chen, Xiuzhen
AU - Shi, Jingang
AU - Song, Peng
N1 - Publisher Copyright:
Copyright © 2019 The Institute of Electronics, Information and Communication Engineers.
PY - 2019
Y1 - 2019
N2 - Over the past several years, the research of micro-expression recognition (MER) has become an active topic in affective computing and computer vision because of its potential value in many application fields, e.g., lie detection. However, most previous works assumed an ideal scenario that both training and testing samples belong to the same micro-expression database, which is easily broken in practice. In this letter, we hence consider a more challenging scenario that the training and testing samples come from different micro-expression databases and investigated unsupervised cross-database MER in which the source database is labeled while the label information of target database is entirely unseen. To solve this interesting problem, we propose an effective method called target-adapted least-squares regression (TALSR). The basic idea of TALSR is to learn a regression coefficient matrix based on the source samples and their provided label information and also enable this learned regression coefficient matrix to suit the target micro-expression database. We are thus able to use the learned regression coefficient matrix to predict the micro-expression categories of the target micro-expression samples. Extensive experiments on CASME II and SMIC micro-expression databases are conducted to evaluate the proposed TALSR. The experimental results show that our TALSR has better performance than lots of recent well-performing domain adaptation methods in dealing with unsupervised cross-database MER tasks.
AB - Over the past several years, the research of micro-expression recognition (MER) has become an active topic in affective computing and computer vision because of its potential value in many application fields, e.g., lie detection. However, most previous works assumed an ideal scenario that both training and testing samples belong to the same micro-expression database, which is easily broken in practice. In this letter, we hence consider a more challenging scenario that the training and testing samples come from different micro-expression databases and investigated unsupervised cross-database MER in which the source database is labeled while the label information of target database is entirely unseen. To solve this interesting problem, we propose an effective method called target-adapted least-squares regression (TALSR). The basic idea of TALSR is to learn a regression coefficient matrix based on the source samples and their provided label information and also enable this learned regression coefficient matrix to suit the target micro-expression database. We are thus able to use the learned regression coefficient matrix to predict the micro-expression categories of the target micro-expression samples. Extensive experiments on CASME II and SMIC micro-expression databases are conducted to evaluate the proposed TALSR. The experimental results show that our TALSR has better performance than lots of recent well-performing domain adaptation methods in dealing with unsupervised cross-database MER tasks.
KW - Cross-database micro-expression recognition
KW - Domain adaptation
KW - Least-squares regression
KW - Micro-expression recognition
KW - Transfer learning
UR - https://www.scopus.com/pages/publications/85069669135
U2 - 10.1587/transinf.2018EDL8174
DO - 10.1587/transinf.2018EDL8174
M3 - 文章
AN - SCOPUS:85069669135
SN - 0916-8532
VL - E102D
SP - 1417
EP - 1421
JO - IEICE Transactions on Information and Systems
JF - IEICE Transactions on Information and Systems
IS - 7
ER -