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This study focuses on Text-to-Sounding-Video (T2SV) generation, which aims to generate a video with synchronized audio from text, with both modalities aligned to the text conditions. Despite progress in joint audio-video training, two critical challenges remain: (1) text conditioning is a bottleneck—shared captions (TV=TA) trigger modal interference, while a gap persists between dense training captions and concise inference user prompts, and (2) the optimal fusion mechanism for cross-modal feature interaction remains unclear. To address the first challenge, we first propose the Cross-Referential Rewriter (CRR) caption framework, a dual-agent pipeline where a Semantic Checker extracts grounded Semantic Anchors and a Cross-Modal Rewriter generates disentangled caption pairs (TV and TA), eliminating modal interference and bridging the training-inference gap.

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