AI RESEARCH

Physics-Based Benchmarking Metrics for Multimodal Synthetic Images

arXiv CS.AI

ArXi:2511.15204v3 Announce Type: replace-cross Current state of the art measures like BLEU, CIDEr, VQA score, SigLIP-2 and CLIPScore are often unable to capture semantic or structural accuracy, especially for domain-specific or context-dependent scenarios. For this, this paper proposes a Physics-Constrained Multimodal Data Evaluation (PCMDE) metric combining large language models with reasoning, knowledge based mapping and vision-language models to overcome these limitations.