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arxiv: 2405.00983 · v1 · pith:ITWJ4N73 · submitted 2024-05-02 · cs.CV

LLM-AD: Large Language Model based Audio Description System

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classification cs.CV
keywords automatedproductionaudiocharacterdescriptionlanguagemultimodalstyle
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The development of Audio Description (AD) has been a pivotal step forward in making video content more accessible and inclusive. Traditionally, AD production has demanded a considerable amount of skilled labor, while existing automated approaches still necessitate extensive training to integrate multimodal inputs and tailor the output from a captioning style to an AD style. In this paper, we introduce an automated AD generation pipeline that harnesses the potent multimodal and instruction-following capacities of GPT-4V(ision). Notably, our methodology employs readily available components, eliminating the need for additional training. It produces ADs that not only comply with established natural language AD production standards but also maintain contextually consistent character information across frames, courtesy of a tracking-based character recognition module. A thorough analysis on the MAD dataset reveals that our approach achieves a performance on par with learning-based methods in automated AD production, as substantiated by a CIDEr score of 20.5.

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Cited by 3 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Andha-Dhun: A First Look at Audio Descriptions in Hindi

    cs.CV 2026-07 conditional novelty 6.0

    The paper introduces Andha-Dhun, the first Hindi audio description dataset, and shows that direct generation from dense captions outperforms translation of English ADs, while machine translation fails to resolve cultu...

  2. READ More than What You See: Reinforcement Learning for Accurate and Coherent Audio Description Generations

    cs.CV 2026-06 unverdicted novelty 6.0

    READ is the first reinforcement-learning framework for training audio-description generators, using sequence-level rewards for reference match, length, format, and context-aware coherence.

  3. Making AI Drafts Count: A Quality Threshold in Audio Description Workflows

    cs.HC 2026-05 unverdicted novelty 5.0

    AI drafts for audio description reduce editing time and cognitive load only when they exceed a content-dependent quality threshold, unlike unguided baseline drafts.