AI RESEARCH

Head-wise Adaptive Rotary Positional Encoding for Fine-Grained Image Generation

arXiv CS.CV

ArXi:2510.10489v2 Announce Type: replace Transformers rely on explicit positional encoding to model structure in data. While Rotary Position Embedding (RoPE) excels in 1D domains, its application to image generation reveals significant limitations such as fine-grained spatial relation modeling, color cues, and object counting. This paper identifies key limitations of standard multi-dimensional RoPE-rigid frequency allocation, axis-wise independence, and uniform head treatment-in capturing the complex structural biases required for fine-grained image generation.