Javascript must be enabled to continue!
MuMUR : Multilingual Multimodal Universal Retrieval
View through CrossRef
Abstract
Multi-modal retrieval has seen tremendous progress with the development of vision-language models. However, further improving these models require additional labelled data which is a huge manual effort. In this paper, we propose a framework MuMUR, that utilizes knowledge transfer from a multilingual model to boost the performance of multi-modal (image and video) retrieval. We first use state-of-the-art machine translation models to construct pseudo ground-truth multilingual visual-text pairs. We then use this data to learn a joint vision-text representation where English and non-English text queries are represented in a common embedding space based on pretrained multilingual models. We evaluate our proposed approach on a diverse set of retrieval datasets: five video retrieval datasets such as MSRVTT, MSVD, DiDeMo, Charades and MSRVTT multilingual, two image retrieval datasets such as Flickr30k and Multi30k . Experimental results demonstrate that our approach achieves state-of-the-art results on all video retrieval datasets outperforming previous models. Additionally, our framework MuMUR significantly beats other multilingual video retrieval dataset. We also observe that MuMUR exhibits strong performance on image retrieval. This demonstrates the universal ability of MuMUR to perform retrieval across all visual inputs (image and video) and text inputs (monolingual and multilingual).
Research Square Platform LLC
Title: MuMUR : Multilingual Multimodal Universal Retrieval
Description:
Abstract
Multi-modal retrieval has seen tremendous progress with the development of vision-language models.
However, further improving these models require additional labelled data which is a huge manual effort.
In this paper, we propose a framework MuMUR, that utilizes knowledge transfer from a multilingual model to boost the performance of multi-modal (image and video) retrieval.
We first use state-of-the-art machine translation models to construct pseudo ground-truth multilingual visual-text pairs.
We then use this data to learn a joint vision-text representation where English and non-English text queries are represented in a common embedding space based on pretrained multilingual models.
We evaluate our proposed approach on a diverse set of retrieval datasets: five video retrieval datasets such as MSRVTT, MSVD, DiDeMo, Charades and MSRVTT multilingual, two image retrieval datasets such as Flickr30k and Multi30k .
Experimental results demonstrate that our approach achieves state-of-the-art results on all video retrieval datasets outperforming previous models.
Additionally, our framework MuMUR significantly beats other multilingual video retrieval dataset.
We also observe that MuMUR exhibits strong performance on image retrieval.
This demonstrates the universal ability of MuMUR to perform retrieval across all visual inputs (image and video) and text inputs (monolingual and multilingual).
Related Results
Multimodal Emotion Recognition and Human Computer Interaction for AI-Driven Mental Health Support (Preprint)
Multimodal Emotion Recognition and Human Computer Interaction for AI-Driven Mental Health Support (Preprint)
BACKGROUND
Mental health has become one of the most urgent global health issues of the twenty-first century. The World Health Organization (WHO) reports tha...
Imagined worldviews in John Lennon’s “Imagine”: a multimodal re-performance / Visões de mundo imaginadas no “Imagine” de John Lennon: uma re-performance multimodal
Imagined worldviews in John Lennon’s “Imagine”: a multimodal re-performance / Visões de mundo imaginadas no “Imagine” de John Lennon: uma re-performance multimodal
Abstract: This paper addresses the issue of multimodal re-performance, a concept developed by us, in view of the fact that the famous song “Imagine”, by John Lennon, was published ...
Literasi Multimodal: Teori, Desain, dan Aplikasi
Literasi Multimodal: Teori, Desain, dan Aplikasi
Buku ini bertujuan untuk pengembangan strategi dan model paket pelajaran atau mata kuliah dengan menawarkan contoh-contoh strategi instruksional yang memiliki landasan teori dan be...
Unconventional Method of Subsea Umbilical Retrieval Using Anchor Handling Vessel
Unconventional Method of Subsea Umbilical Retrieval Using Anchor Handling Vessel
Abstract
A deepwater field in West Africa was decommissioned and subsea facilities retrieval operation was carried out as part of the Abandonment and Decommissioning...
Multimodal Information Integration and Retrieval Framework Based on Graph Neural Networks
Multimodal Information Integration and Retrieval Framework Based on Graph Neural Networks
In the context of the rapid proliferation of multimodal data (e.g. text, image, audio), the effective integration and retrieval of information across different modalities has emerg...
Language Alternation in Multilingual Societies: Analyzing Bi/Multilingual Conversation
Language Alternation in Multilingual Societies: Analyzing Bi/Multilingual Conversation
The research examines the relationship between language choice and alternation in bilingual/multilingual conversations within a multicultural/multilingual context. It builds on the...
Metacognition in multilingual learning and teaching
Metacognition in multilingual learning and teaching
Abstract
Metacognition has been increasingly discussed as one of the main features of learning in the 21st century (see Haukås, Bjørke, & Dypedahl, 2018). In the Dynamic Model ...
The influence of timing of oocytes retrieval and embryo transfer on the IVF-ET outcomes in patients having bilateral salpingectomy due to bilateral hydrosalpinx
The influence of timing of oocytes retrieval and embryo transfer on the IVF-ET outcomes in patients having bilateral salpingectomy due to bilateral hydrosalpinx
ObjectiveThe objective of the study was to investigate whether the sequence of oocyte retrieval and salpingectomy for hydrosalpinx affects pregnancy outcomes of in vitro fertilizat...

