Are We Making Progress in Multimodal Domain Generalization? A Comprehensive Benchmark Study

Hao Dong, Hongzhao Li, Shupan Li, Muhammad Haris Khan, Eleni Chatzi, Olga Fink

arXiv:2605.06643 · 2026-05-06 공개 · arXiv · PDF

Abstract

Despite the growing popularity of Multimodal Domain Generalization (MMDG) for enhancing model robustness, it remains unclear whether reported performance gains reflect genuine algorithmic progress or are artifacts of inconsistent evaluation protocols. Current research is fragmented, with studies varying significantly across datasets, modality configurations, and experimental settings. Furthermore, existing benchmarks focus predominantly on action recognition, often neglecting critical real-world challenges such as input corruptions, missing modalities, and model trustworthiness. This lack of standardization obscures a reliable assessment of the field's advancement. To address this issue, we introduce MMDG-Bench, the first unified and comprehensive benchmark for MMDG, which standardizes evaluation across six datasets spanning three diverse tasks: action recognition, mechanical fault diagnosis, and sentiment analysis. MMDG-Bench encompasses six modality combinations, nine representative methods, and multiple evaluation settings. Beyond standard accuracy, it systematically assesses corruption robustness, missing-modality generalization, misclassification detection, and out-of-distribution detection. With 7, 402 neural networks trained in total across 95 unique cross-domain tasks, MMDG-Bench yields five key findings: (1) under fair comparisons, recent specialized MMDG methods offer only marginal improvements over ERM baseline; (2) no single method consistently outperforms others across datasets or modality combinations; (3) a substantial gap to upper-bound performance persists, indicating that MMDG remains far from solved; (4) trimodal fusion does not consistently outperform the strongest bimodal configurations; and (5) all evaluated methods exhibit significant degradation under corruption and missing-modality scenarios, with some methods further compromising model trustworthiness.

한국어 요약

📋 한 줄 요약

**[멀티모달 도메인 일반화]** 6개 데이터셋·9개 방법·다양한 모달 조합을 표준화한 최초의 통합 MMDG 벤치마크 MMDG-Bench를 제시하고 7,402개 모델로 광범위 평가했다.

🎯 핵심 기여도

💡 핵심 아이디어

기존 MMDG 연구는 데이터셋·모달·실험 설정이 제각각이라 진정한 알고리즘적 진보 여부를 가늠하기 어렵다. 표준화된 통합 평가 환경에서 공정 비교를 수행해 분야의 실제 진전 정도를 진단한다.

🔬 기술적 접근법

📊 주요 결과

💭 의의 및 한계

**의의**: MMDG 분야의 과장된 진보 주장을 정량적으로 재검증하고 향후 연구의 표준 평가 기반을 제공한다. **한계**: 평가 비용이 매우 크고 새로운 모달·과업 추가 시 확장성이 제한될 수 있다.

🚀 실용적 활용