TL;DR
This paper introduces a unified geometric framework for domain adaptation that leverages Riemannian geometry of covariance matrices to align source and target domains, improving transfer learning performance.
Contribution
It formulates domain adaptation as a geometric mean metric learning problem on SPD manifolds, enabling integration of multiple domain differences in a unified approach.
Findings
Improved domain adaptation results on computer vision benchmarks.
Analytical computation of geodesics on SPD manifolds.
Unified approach combining statistical and geometric domain differences.
Abstract
We present a novel framework for domain adaptation, whereby both geometric and statistical differences between a labeled source domain and unlabeled target domain can be integrated by exploiting the curved Riemannian geometry of statistical manifolds. Our approach is based on formulating transfer from source to target as a problem of geometric mean metric learning on manifolds. Specifically, we exploit the curved Riemannian manifold geometry of symmetric positive definite (SPD) covariance matrices. We exploit a simple but important observation that as the space of covariance matrices is both a Riemannian space as well as a homogeneous space, the shortest path geodesic between two covariances on the manifold can be computed analytically. Statistics on the SPD matrix manifold, such as the geometric mean of two matrices can be reduced to solving the well-known Riccati equation. We show how…
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