2023 article

FAST OPTIMAL TRANSPORT FOR LATENT DOMAIN ADAPTATION

2023 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING, ICIP, pp. 1810–1814.

By: S. Roheda*, A. Panahi* & H. Krim n

author keywords: Optimal Transport; Domain Adaptation
TL;DR: An algorithm is proposed that uses optimal transport theory with a verifiably efficient and implementable solution to learn the best latent feature representation for unsupervised Domain Adaptation. (via Semantic Scholar)
Source: Web Of Science
Added: March 11, 2024

In this paper, we address the problem of unsupervised Domain Adaptation. The need for such an adaptation arises when the distribution of the target data differs from that which is used to develop the model and the ground truth information of the target data is unknown. We propose an algorithm that uses optimal transport theory with a verifiably efficient and implementable solution to learn the best latent feature representation. This is achieved by minimizing the cost of transporting the samples from the target domain to the distribution of the source domain.