AI RESEARCH
FlowSeg: Dynamic Semantic Guidance for LLM-Conditioned Segmentation
arXiv CS.CV
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ArXi:2605.29461v1 Announce Type: new LLM-conditioned segmentation has recently advanced rapidly by coupling large language models with iterative mask generation frameworks. However, we identify a persistent failure mode in current propose-then-select pipelines. Although high-quality mask candidates are often generated, the final prediction may fail to match the given linguistic condition. This failure arises because language semantics are typically used as static prompts or post-hoc matching signals, rather than participating in the iterative mask generation process.