sceneagnostic
Sceneagnostic is an adjective used in artificial intelligence, computer vision, and related fields to describe models, representations, or processes that are designed to operate effectively across a wide range of visual scenes without relying on cues tied to any single scene. The term emphasizes generalization beyond the particular environmental context in which a model was trained.
In practice, sceneagnostic approaches strive for cross-scene invariance. They seek robustness to scene attributes such as
Implementation frequently involves constructing scene-agnostic representations—embeddings that encode the core object or concept while suppressing scene-specific
Origin and usage notes: sceneagnostic is a relatively recent and informal term. It is sometimes written as