Shifting the Breaking Point of Flow Matching for Multi-Instance Editing 文章

ArXiv CS.CV2026-06-04NEWSen作者: Carmine Zaccagnino, Fabio Quattrini, Enis Simsar, Marta Tintor\'e Gazulla, Rita Cucchiara, Alessio Tonioni, Silvia Cascianelli

摘要

arXiv:2602.08749v3 Announce Type: replace Abstract: Flow matching models have recently emerged as an efficient alternative to diffusion, especially for text-guided image generation and editing, offering faster inference through continuous-time dynamics. However, existing flow-based editors predominantly support global or single-instruction edits and struggle with multi-instance scenarios, where multiple parts of a reference input must be edited independently without semantic interference. We identify this limitation as a consequence of globally conditioned velocity fields and joint attention mechanisms, which entangle concurrent edits. To address this issue, we introduce Instance-Disentangled Attention, a mechanism that partitions joint attention operations, enforcing binding between instance-specific textual instructions and spatial regions during velocity field estimation.

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