Litcius/Paper detail

Navigating the Multimodal Landscape: A Review on Integration of Text and Image Data in Machine Learning Architectures

Maisha Binte Rashid, Md Shahidur Rahaman, Pablo Rivas

2024Machine Learning and Knowledge Extraction15 citationsDOIOpen Access PDF

Abstract

Images and text have become essential parts of the multimodal machine learning (MMML) framework in today’s world because data are always available, and technological breakthroughs bring disparate forms together, and while text adds semantic richness and narrative to images, images capture visual subtleties and emotions. Together, these two media improve knowledge beyond what would be possible with just one revolutionary application. This paper investigates feature extraction and advancement from text and image data using pre-trained models in MMML. It offers a thorough analysis of fusion architectures, outlining text and image data integration and evaluating their overall advantages and effects. Furthermore, it draws attention to the shortcomings and difficulties that MMML currently faces and guides areas that need more research and development. We have gathered 341 research articles from five digital library databases to accomplish this. Following a thorough assessment procedure, we have 88 research papers that enable us to evaluate MMML in detail. Our findings demonstrate that pre-trained models, such as BERT for text and ResNet for images, are predominantly employed for feature extraction due to their robust performance in diverse applications. Fusion techniques, ranging from simple concatenation to advanced attention mechanisms, are extensively adopted to enhance the representation of multimodal data. Despite these advancements, MMML models face significant challenges, including handling noisy data, optimizing dataset size, and ensuring robustness against adversarial attacks. Our findings highlight the necessity for further research to address these challenges, particularly in developing methods to improve the robustness of MMML models.

Topics & Concepts

Computer scienceRobustness (evolution)Artificial intelligenceData scienceMachine learningConcatenation (mathematics)MathematicsGeneBiochemistryChemistryCombinatoricsMultimodal Machine Learning ApplicationsDomain Adaptation and Few-Shot LearningCOVID-19 diagnosis using AI