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Autori principali: Böhle, Moritz, Royer, Amélie, Marrie, Juliette, Grave, Edouard, Pérez, Patrick
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2512.19535
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author Böhle, Moritz
Royer, Amélie
Marrie, Juliette
Grave, Edouard
Pérez, Patrick
author_facet Böhle, Moritz
Royer, Amélie
Marrie, Juliette
Grave, Edouard
Pérez, Patrick
contents Vision-language models (VLMs) are commonly trained by directly inserting image tokens from a pretrained vision encoder into the text stream of a language model. This allows text and image information to fully attend to one another within the model, but becomes rapidly costly for long multi-image conversations or streaming video applications, both in terms of memory and compute. VLMs leveraging cross-attention (CA) are an efficient alternative to token insertion as image tokens are not added to the KV cache. Despite being introduced early on, multimodal CA models are scarce in the current VLM literature and often underperform their token insertion counterparts. In this work, we reinvestigate the effectiveness of cross-attention for vision-language modeling: (i) We analyze the core differences between the cross-attention and self-attention mechanisms, (ii) we train cross-attention VLMs both from a text-only LLM and by adapting a pretrained insertion-based VLM, showing that simple cross-attention is far more competitive with token insertion than previously reported, and (iii) we demonstrate the practical advantages of cross-attention on real-time video captioning, where it naturally maintains low latency and near-constant memory cost. For samples and code, please see our project page at https://kyutai.org/casa .
format Preprint
id arxiv_https___arxiv_org_abs_2512_19535
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle CASA: Cross-Attention over Self-Attention for Efficient Vision-Language Fusion
Böhle, Moritz
Royer, Amélie
Marrie, Juliette
Grave, Edouard
Pérez, Patrick
Computer Vision and Pattern Recognition
Artificial Intelligence
Vision-language models (VLMs) are commonly trained by directly inserting image tokens from a pretrained vision encoder into the text stream of a language model. This allows text and image information to fully attend to one another within the model, but becomes rapidly costly for long multi-image conversations or streaming video applications, both in terms of memory and compute. VLMs leveraging cross-attention (CA) are an efficient alternative to token insertion as image tokens are not added to the KV cache. Despite being introduced early on, multimodal CA models are scarce in the current VLM literature and often underperform their token insertion counterparts. In this work, we reinvestigate the effectiveness of cross-attention for vision-language modeling: (i) We analyze the core differences between the cross-attention and self-attention mechanisms, (ii) we train cross-attention VLMs both from a text-only LLM and by adapting a pretrained insertion-based VLM, showing that simple cross-attention is far more competitive with token insertion than previously reported, and (iii) we demonstrate the practical advantages of cross-attention on real-time video captioning, where it naturally maintains low latency and near-constant memory cost. For samples and code, please see our project page at https://kyutai.org/casa .
title CASA: Cross-Attention over Self-Attention for Efficient Vision-Language Fusion
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2512.19535