Joint Geometric and Trajectory Consistency Learning for One-Step Real-World Super-Resolution
This paper proposes GTASR, a lightweight one-step Real-World Super-Resolution framework that overcomes the limitations of existing Consistency Models by introducing Trajectory Alignment and Dual-Reference Structural Rectification to eliminate consistency drift and ensure structural coherence.