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Auteurs principaux: Royer, Amélie, Böhle, Moritz, de Marmiesse, Gabriel, Mazaré, Laurent, Zeghidour, Neil, Défossez, Alexandre, Pérez, Patrick
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2503.15633
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author Royer, Amélie
Böhle, Moritz
de Marmiesse, Gabriel
Mazaré, Laurent
Zeghidour, Neil
Défossez, Alexandre
Pérez, Patrick
author_facet Royer, Amélie
Böhle, Moritz
de Marmiesse, Gabriel
Mazaré, Laurent
Zeghidour, Neil
Défossez, Alexandre
Pérez, Patrick
contents The recent successes of Vision-Language models raise the question of how to equivalently imbue a pretrained speech model with vision understanding, an important milestone towards building a multimodal speech model able to freely converse about images. Building such a conversational Vision-Speech model brings its unique challenges: (i) paired image-speech datasets are much scarcer than their image-text counterparts, (ii) ensuring real-time latency at inference is crucial thus bringing compute and memory constraints, and (iii) the model should preserve prosodic features (e.g., speaker tone) which cannot be inferred from text alone. In this work, we introduce MoshiVis, augmenting a recent dialogue speech LLM, Moshi, with visual inputs through lightweight adaptation modules. An additional dynamic gating mechanism enables the model to more easily switch between the visual inputs and unrelated conversation topics. To reduce training costs, we design a simple one-stage, parameter-efficient fine-tuning pipeline in which we leverage a mixture of image-text (i.e., "speechless") and image-speech samples. We evaluate the model on downstream visual understanding tasks with both audio and text prompts, and report qualitative samples of interactions with MoshiVis. Our inference code will be made available, as well as the image-speech data used for audio evaluation.
format Preprint
id arxiv_https___arxiv_org_abs_2503_15633
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Vision-Speech Models: Teaching Speech Models to Converse about Images
Royer, Amélie
Böhle, Moritz
de Marmiesse, Gabriel
Mazaré, Laurent
Zeghidour, Neil
Défossez, Alexandre
Pérez, Patrick
Computer Vision and Pattern Recognition
The recent successes of Vision-Language models raise the question of how to equivalently imbue a pretrained speech model with vision understanding, an important milestone towards building a multimodal speech model able to freely converse about images. Building such a conversational Vision-Speech model brings its unique challenges: (i) paired image-speech datasets are much scarcer than their image-text counterparts, (ii) ensuring real-time latency at inference is crucial thus bringing compute and memory constraints, and (iii) the model should preserve prosodic features (e.g., speaker tone) which cannot be inferred from text alone. In this work, we introduce MoshiVis, augmenting a recent dialogue speech LLM, Moshi, with visual inputs through lightweight adaptation modules. An additional dynamic gating mechanism enables the model to more easily switch between the visual inputs and unrelated conversation topics. To reduce training costs, we design a simple one-stage, parameter-efficient fine-tuning pipeline in which we leverage a mixture of image-text (i.e., "speechless") and image-speech samples. We evaluate the model on downstream visual understanding tasks with both audio and text prompts, and report qualitative samples of interactions with MoshiVis. Our inference code will be made available, as well as the image-speech data used for audio evaluation.
title Vision-Speech Models: Teaching Speech Models to Converse about Images
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.15633