This article discusses how federated learning changes computer vision by training AI models without sharing raw data. It solves privacy issues and improves model accuracy, using examples like smartphones that are getting better at predicting text. We cover how federated learning works, its challenges, and how to solve them. Finally, we look at real-world uses in medical imaging, smart surveillance, self-driving cars, retail, farming, and smart home device