Deep learning-based astronomical multimodal data fusion: A comprehensive review
Wujun Shao, Dongwei Fan, Chenzhou Cui, Yunfei Xu, Shirui Wei, Xin Lyu

TL;DR
This comprehensive review explores how deep learning techniques are transforming multimodal data fusion in astronomy, enhancing data integration, analysis, and understanding of the universe amidst increasing data complexity.
Contribution
It provides a structured overview of deep learning models, fusion strategies, datasets, and challenges in astronomical multimodal data fusion, highlighting recent advances and future directions.
Findings
Deep learning models effectively facilitate multimodal data fusion in astronomy.
Various fusion strategies have distinct advantages and limitations.
The review identifies key challenges and promising future research directions.
Abstract
With the rapid advancements in observational technologies and the widespread implementation of large-scale sky surveys, diverse electromagnetic wave data (e.g., optical and infrared) and non-electromagnetic wave data (e.g., gravitational waves) have become increasingly accessible. Astronomy has thus entered an unprecedented era of data abundance and complexity. Astronomers have long relied on unimodal data analysis to perceive the universe, but these efforts often provide only limited insights when confronted with the current massive and heterogeneous astronomical data. In this context, multimodal data fusion (MDF), as an emerging method, provides new opportunities to enhance the value of astronomical data and deepening the understanding of the universe by integrating information from different modalities. Recent progress in artificial intelligence (AI), particularly in deep learning…
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Taxonomy
TopicsGamma-ray bursts and supernovae · Astronomical Observations and Instrumentation · Galaxies: Formation, Evolution, Phenomena
