Title of article :
Deep Unsupervised Domain Adaptation for Image Classification via Low Rank Representation Learning
Author/Authors :
Madadi, Yeganeh Department of Computer Engineering - Faculty of Technical and Engineering - South Tehran Branch - Islamic Azad University, Tehran , Seydi, Vahid Department of Computer Engineering - Faculty of Technical and Engineering - South Tehran Branch - Islamic Azad University, Tehran , Hosseini, Reshad School of ECE - College of Engineering - University of Tehran
Abstract :
Domain adaptation is a powerful technique given a wide amount of labeled data
from similar attributes in different domains. In real-world applications, there is a
huge number of data but almost more of them are unlabeled. It is effective in image
classification where it is expensive and time-consuming to obtain adequate label
data. We propose a novel method named DALRRL, which consists of deep
architecture with domain-general and domain-specific representations across
domains for deep unsupervised domain adaptation. Also, we apply low-rank
representation learning to reduce source and target domains discrepancy. The lowrank constraint can uncover more related information between domains and it can
transfer more relevant knowledge from the source domain to the target domain. The
DALRRL guarantees to minimize marginal and conditional distributions difference
between the source and target domains. The experimental results conducted on two
benchmark domain adaptation datasets demonstrate the effectiveness of our method
in image classification tasks.
Keywords :
Deep learning , Domain adaptation , classification , Low-rank representation
Journal title :
Journal of Advances in Computer Research