Correlation Alignment by Riemannian Metric for Domain Adaptation

05/23/2017
by   Pietro Morerio, et al.
0

Domain adaptation techniques address the problem of reducing the sensitivity of machine learning methods to the so-called domain shift, namely the difference between source (training) and target (test) data distributions. In particular, unsupervised domain adaptation assumes no labels are available in the target domain. To this end, aligning second order statistics (covariances) of target and source domains have proven to be an effective approach ti fill the gap between the domains. However, covariance matrices do not form a subspace of the Euclidean space, but live in a Riemannian manifold with non-positive curvature, making the usual Euclidean metric suboptimal to measure distances. In this paper, we extend the idea of training a neural network with a constraint on the covariances of the hidden layer features, by rigorously accounting for the curved structure of the manifold of symmetric positive definite matrices. The resulting loss function exploits a theoretically sound geodesic distance on such manifold. Results show indeed the suboptimal nature of the Euclidean distance. This makes us able to perform better than previous approaches on the standard Office dataset, a benchmark for domain adaptation techniques.

READ FULL TEXT
research
07/13/2017

Deep Domain Adaptation by Geodesic Distance Minimization

In this paper, we propose a new approach called Deep LogCORAL for unsupe...
research
04/28/2018

A Unified Framework for Domain Adaptation using Metric Learning on Manifolds

We present a novel framework for domain adaptation, whereby both geometr...
research
11/17/2015

Return of Frustratingly Easy Domain Adaptation

Unlike human learning, machine learning often fails to handle changes be...
research
02/20/2020

Unsupervised Domain Adaptation via Discriminative Manifold Embedding and Alignment

Unsupervised domain adaptation is effective in leveraging the rich infor...
research
08/16/2022

Human-to-Robot Manipulability Domain Adaptation with Parallel Transport and Manifold-Aware ICP

Manipulability ellipsoids efficiently capture the human pose and reveal ...
research
02/04/2018

Museum Exhibit Identification Challenge for Domain Adaptation and Beyond

In this paper, we approach an open problem of artwork identification and...
research
06/03/2019

Optimal Transport on the Manifold of SPD Matrices for Domain Adaptation

The problem of domain adaptation has become central in many applications...

Please sign up or login with your details

Forgot password? Click here to reset