AI RESEARCH

TCP-SSM: Efficient Vision State Space Models with Token-Conditioned Poles

arXiv CS.AI

ArXi:2605.11563v1 Announce Type: cross State Space Models (SSMs) have emerged as a compelling alternative to attention models for long-range vision tasks, offering input-dependent recurrence with linear complexity. However, most efficient SSM variants reduce computation cost by modifying scan routes, resolutions, or traversal patterns, while largely leaving the recurrent dynamics implicit. Consequently, the model's state-dependent memory behavior is difficult to control, particularly in compact backbones where long scan paths can exceed the effective memory horizon.