An introduction to domain adaptation and transfer learning
In machine learning, if the training data is an unbiased sample of an underlying distribution,
then the learned classification function will make accurate predictions for new samples …
then the learned classification function will make accurate predictions for new samples …
Frequency selective hybrid precoding for limited feedback millimeter wave systems
Hybrid analog/digital precoding offers a compromise between hardware complexity and
system performance in millimeter wave (mmWave) systems. This type of precoding allows …
system performance in millimeter wave (mmWave) systems. This type of precoding allows …
Domain adaptation for object recognition: An unsupervised approach
R Gopalan, R Li, R Chellappa - 2011 international conference …, 2011 - ieeexplore.ieee.org
Adapting the classifier trained on a source domain to recognize instances from a new target
domain is an important problem that is receiving recent attention. In this paper, we present …
domain is an important problem that is receiving recent attention. In this paper, we present …
PCA-SIFT: A more distinctive representation for local image descriptors
Stable local feature detection and representation is a fundamental component of many
image registration and object recognition algorithms. Mikolajczyk and Schmid (June 2003) …
image registration and object recognition algorithms. Mikolajczyk and Schmid (June 2003) …
Interpolation method for adapting reduced-order models and application to aeroelasticity
DURING the last two decades, giant strides have been achieved in many aspects of
computational engineering and sciences. Higher-order mathematical models, better …
computational engineering and sciences. Higher-order mathematical models, better …
Grassmann discriminant analysis: a unifying view on subspace-based learning
In this paper we propose a discriminant learning framework for problems in which data
consist of linear subspaces instead of vectors. By treating subspaces as basic elements, we …
consist of linear subspaces instead of vectors. By treating subspaces as basic elements, we …
Bi-level meta-learning for few-shot domain generalization
The goal of few-shot learning is to learn the generalizability from seen to unseen data with
only a few samples. Most previous few-shot learning focus on learning generalizability …
only a few samples. Most previous few-shot learning focus on learning generalizability …
Trust-region methods on Riemannian manifolds
A general scheme for trust-region methods on Riemannian manifolds is proposed and
analyzed. Among the various approaches available to (approximately) solve the trust-region …
analyzed. Among the various approaches available to (approximately) solve the trust-region …
Statistical computations on Grassmann and Stiefel manifolds for image and video-based recognition
In this paper, we examine image and video-based recognition applications where the
underlying models have a special structure-the linear subspace structure. We discuss how …
underlying models have a special structure-the linear subspace structure. We discuss how …
A Grassmann manifold handbook: Basic geometry and computational aspects
The Grassmann manifold of linear subspaces is important for the mathematical modelling of
a multitude of applications, ranging from problems in machine learning, computer vision and …
a multitude of applications, ranging from problems in machine learning, computer vision and …