The Metaverse is deemed the next evolution of the Internet and has received
much attention recently. Metaverse applications via mobile augmented reality
(MAR) require rapid and accurate object detection to mix digital data with the
real world. As mobile devices evolve, their computational capabilities are
increasing, and thus their computational resources can be leveraged to train
machine learning models. In light of the increasing concerns of user privacy
and data security, federated learning (FL) has become a promising distributed
learning framework for privacy-preserving analytics. In this article, FL and
MAR are brought together in the Metaverse. We discuss the necessity and
rationality of the combination of FL and MAR. The prospective technologies that
support FL and MAR in the Metaverse are also discussed. In addition, existing
challenges that prevent the fulfillment of FL and MAR in the Metaverse and
several application scenarios are presented. Finally, three case studies of
Metaverse FL-MAR systems are demonstrated.