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RVLF: A Reinforcing Vision-Language Framework for Gloss-Free Sign Language Translation

Published 8 Dec 2025 in cs.CV | (2512.07273v1)

Abstract: Gloss-free sign language translation (SLT) is hindered by two key challenges: inadequate sign representation that fails to capture nuanced visual cues, and sentence-level semantic misalignment in current LLM-based methods, which limits translation quality. To address these issues, we propose a three-stage reinforcing vision-language framework (RVLF). We build a large vision-LLM (LVLM) specifically designed for sign language, and then combine it with reinforcement learning (RL) to adaptively enhance translation performance. First, for a sufficient representation of sign language, RVLF introduces an effective semantic representation learning mechanism that fuses skeleton-based motion cues with semantically rich visual features extracted via DINOv2, followed by instruction tuning to obtain a strong SLT-SFT baseline. Then, to improve sentence-level semantic misalignment, we introduce a GRPO-based optimization strategy that fine-tunes the SLT-SFT model with a reward function combining translation fidelity (BLEU) and sentence completeness (ROUGE), yielding the optimized model termed SLT-GRPO. Our conceptually simple framework yields substantial gains under the gloss-free SLT setting without pre-training on any external large-scale sign language datasets, improving BLEU-4 scores by +5.1, +1.11, +1.4, and +1.61 on the CSL-Daily, PHOENIX-2014T, How2Sign, and OpenASL datasets, respectively. To the best of our knowledge, this is the first work to incorporate GRPO into SLT. Extensive experiments and ablation studies validate the effectiveness of GRPO-based optimization in enhancing both translation quality and semantic consistency.

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