AI RESEARCH
Curing Semantic Drift: A Dynamic Approach to Grounding Generation in Large Vision-Language Models
arXiv CS.CV
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ArXi:2506.21509v4 Announce Type: replace Large Vision-Language Models (LVLMs) face a tug-of-war between powerful linguistic priors and visual evidence, often leading to \emph{semantic drift}: a progressive detachment from the input image that can abruptly emerge at specific decoding steps. Through a token-level diagnosis, we show that hallucination is frequently triggered not by the absence of grounded candidates, but by a failure of selection -- the model chooses a linguistically convenient yet visually unfaithful token even when better grounded alternatives exist.