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M2C: Towards Automatic Multimodal Manga Complement

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arxiv 2310.17130 v1 pith:ZSEDCOXD submitted 2023-10-26 cs.CL

M2C: Towards Automatic Multimodal Manga Complement

classification cs.CL
keywords mangacomplementmultimodallanguagecomicsfirstfvp-mmethod
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Multimodal manga analysis focuses on enhancing manga understanding with visual and textual features, which has attracted considerable attention from both natural language processing and computer vision communities. Currently, most comics are hand-drawn and prone to problems such as missing pages, text contamination, and aging, resulting in missing comic text content and seriously hindering human comprehension. In other words, the Multimodal Manga Complement (M2C) task has not been investigated, which aims to handle the aforementioned issues by providing a shared semantic space for vision and language understanding. To this end, we first propose the Multimodal Manga Complement task by establishing a new M2C benchmark dataset covering two languages. First, we design a manga argumentation method called MCoT to mine event knowledge in comics with large language models. Then, an effective baseline FVP-M$^{2}$ using fine-grained visual prompts is proposed to support manga complement. Extensive experimental results show the effectiveness of FVP-M$^{2}$ method for Multimodal Mange Complement.

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Cited by 1 Pith paper

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  1. Re:Verse -- Can Your VLM Read a Manga?

    cs.CV 2025-08 unverdicted novelty 6.0

    Current VLMs excel at individual manga panel interpretation but systematically fail at temporal causality and cross-panel cohesion in long-form narratives.