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3 months ago

Supervised Multimodal Bitransformers for Classifying Images and Text

Douwe Kiela Suvrat Bhooshan Hamed Firooz Ethan Perez Davide Testuggine

Supervised Multimodal Bitransformers for Classifying Images and Text

Abstract

Self-supervised bidirectional transformer models such as BERT have led to dramatic improvements in a wide variety of textual classification tasks. The modern digital world is increasingly multimodal, however, and textual information is often accompanied by other modalities such as images. We introduce a supervised multimodal bitransformer model that fuses information from text and image encoders, and obtain state-of-the-art performance on various multimodal classification benchmark tasks, outperforming strong baselines, including on hard test sets specifically designed to measure multimodal performance.

Code Repositories

facebookresearch/mmbt
Official
pytorch
Mentioned in GitHub
huggingface/transformers
pytorch
Mentioned in GitHub
adriangrepo/mmbt_lightning
pytorch
Mentioned in GitHub
IsaacRodgz/mmbt_experiments
pytorch
Mentioned in GitHub
ThilinaRajapakse/simpletransformers
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
natural-language-inference-on-v-snliMMBT
Accuracy: 90.5

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Supervised Multimodal Bitransformers for Classifying Images and Text | Papers | HyperAI