< Back to previous page

Publication

Unsupervised domain adaptation based on subspace alignment

Book Contribution - Chapter

© Springer International Publishing AG 2017. Subspace-based domain adaptation methods have been very successful in the context of image recognition. In this chapter, we discuss methods using Subspace Alignment (SA). They are based on a mapping function which aligns the source subspace with the target one, so as to obtain a domain invariant feature space. The solution of the corresponding optimization problem can be obtained in closed form, leading to a simple to implement and fast algorithm. The only hyperparameter involved corresponds to the dimension of the subspaces. We give two methods, SA and SA-MLE, for setting this variable. SA is a purely linear method. As a nonlinear extension, Landmarks-based Kernelized Subspace Alignment (LSSA) first projects the data nonlinearly based on a set of landmarks, which have been selected so as to reduce the discrepancy between the domains.
Book: Domain adaptation in computer vision applications
Pages: 81 - 94
ISBN:978-3-319-58346-4
Publication year:2017
Accessibility:Closed