convergeim
Convergeim is a term used to describe a framework for fusing multiple heterogeneous information streams into a single, converged representation. It emphasizes iterative alignment of inputs from different modalities or sources, aiming to produce a stable model that reflects all data sources.
The core idea of convergeim is to employ consensus-based or distributed optimization techniques that drive the
Variants include centralized implementations, where a central fusion node aggregates inputs, and distributed implementations, where nodes
In practice, convergeim supports applications in autonomous systems, surveillance and robotics, multimedia analytics, sensor networks, and
Limitations include lack of a universal definition, varying objectives across domains, sensitivity to model assumptions, and