ASIF: Coupled data turns unimodal models to multimodal without training

Norelli A, Fumero M, Maiorca V, Moschella L, Rodolà E, Locatello F. 2023. ASIF: Coupled data turns unimodal models to multimodal without training. 37th Conference on Neural Information Processing Systems. NeurIPS: Neural Information Processing Systems, NeurIPS, vol. 36, 15303–15319.

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Conference Paper | Published | English
Author
Norelli, Antonio; Fumero, Marco; Maiorca, Valentino; Moschella, Luca; Rodolà, Emanuele; Locatello, FrancescoISTA

Corresponding author has ISTA affiliation

Department
Series Title
NeurIPS
Abstract
CLIP proved that aligning visual and language spaces is key to solving many vision tasks without explicit training, but required to train image and text encoders from scratch on a huge dataset. LiT improved this by only training the text encoder and using a pre-trained vision network. In this paper, we show that a common space can be created without any training at all, using single-domain encoders (trained with or without supervision) and a much smaller amount of image-text pairs. Furthermore, our model has unique properties. Most notably, deploying a new version with updated training samples can be done in a matter of seconds. Additionally, the representations in the common space are easily interpretable as every dimension corresponds to the similarity of the input to a unique entry in the multimodal dataset. Experiments on standard zero-shot visual benchmarks demonstrate the typical transfer ability of image-text models. Overall, our method represents a simple yet surprisingly strong baseline for foundation multi-modal models, raising important questions on their data efficiency and on the role of retrieval in machine learning.
Publishing Year
Date Published
2023-10-04
Proceedings Title
37th Conference on Neural Information Processing Systems
Publisher
Curran Associates
Acknowledgement
AN, MF, and FL partially worked on ASIF when they were at Amazon Web Services in Tübingen, Germany. This paper is financially supported by the PRIN 2020 project no.2020TA3K9N (LEGO.AI), PNRR MUR project PE0000013-FAIR, and ERC Grant no.802554 (SPECGEO).
Volume
36
Page
15303-15319
Conference
NeurIPS: Neural Information Processing Systems
Conference Location
New Orleans, LA, United States
Conference Date
2023-12-12 – 2023-12-14
IST-REx-ID

Cite this

Norelli A, Fumero M, Maiorca V, Moschella L, Rodolà E, Locatello F. ASIF: Coupled data turns unimodal models to multimodal without training. In: 37th Conference on Neural Information Processing Systems. Vol 36. Curran Associates; 2023:15303-15319.
Norelli, A., Fumero, M., Maiorca, V., Moschella, L., Rodolà, E., & Locatello, F. (2023). ASIF: Coupled data turns unimodal models to multimodal without training. In 37th Conference on Neural Information Processing Systems (Vol. 36, pp. 15303–15319). New Orleans, LA, United States: Curran Associates.
Norelli, Antonio, Marco Fumero, Valentino Maiorca, Luca Moschella, Emanuele Rodolà, and Francesco Locatello. “ASIF: Coupled Data Turns Unimodal Models to Multimodal without Training.” In 37th Conference on Neural Information Processing Systems, 36:15303–19. Curran Associates, 2023.
A. Norelli, M. Fumero, V. Maiorca, L. Moschella, E. Rodolà, and F. Locatello, “ASIF: Coupled data turns unimodal models to multimodal without training,” in 37th Conference on Neural Information Processing Systems, New Orleans, LA, United States, 2023, vol. 36, pp. 15303–15319.
Norelli A, Fumero M, Maiorca V, Moschella L, Rodolà E, Locatello F. 2023. ASIF: Coupled data turns unimodal models to multimodal without training. 37th Conference on Neural Information Processing Systems. NeurIPS: Neural Information Processing Systems, NeurIPS, vol. 36, 15303–15319.
Norelli, Antonio, et al. “ASIF: Coupled Data Turns Unimodal Models to Multimodal without Training.” 37th Conference on Neural Information Processing Systems, vol. 36, Curran Associates, 2023, pp. 15303–19.
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