Litcius/Paper detail

Encoder–Decoder Calibration for Multimodal Machine Translation

Turghun Tayir, Lin Li, Bei Li, Jianquan Liu, Kong Aik Lee

2024IEEE Transactions on Artificial Intelligence18 citationsDOI

Abstract

The main purpose of multimodal machine translation is to improve the quality of translation results by taking the corresponding visual context as an additional input. Recently many studies in neural machine translation have attempted to obtain high-quality multimodal representation of encoder or decoder via attention mechanism. However, attention mechanism does not always accurately identify the decisive input for each prediction, which leads to an unsatisfactory multimodal information fusion. To this end, we propose an encoder-decoder calibration method which can automatically calibrate the image and text fusion representation in the encoder, and find the decisive input to the translation in the decoder. We validate our model on the multimodal machine translation dataset Multi30K. Experimental results show that our method significantly outperforms several recent baselines for both English–German and English–French translation tasks in terms of BLEU and METEOR.

Topics & Concepts

Machine translationComputer scienceEncoderTranslation (biology)Artificial intelligenceBLEURepresentation (politics)Context (archaeology)Speech recognitionNatural language processingComputer visionBiologyOperating systemChemistryPaleontologyPolitical scienceBiochemistryGenePoliticsLawMessenger RNANatural Language Processing TechniquesMultimodal Machine Learning ApplicationsTopic Modeling