MSD-Score: Multi-Scale Distributional Scoring for Reference-Free Image Caption Evaluation
This work addresses the need for reliable reference-free evaluation of image captions, providing both high correlation with human judgments and interpretable error diagnostics.
MSD-Score is a reference-free metric for image caption evaluation that models embeddings as von Mises-Fisher mixtures and uses multi-scale distributional scoring to detect fine-grained mismatches. It achieves state-of-the-art correlation with human judgments among reference-free metrics.
Evaluating image captions without references remains challenging because global embedding similarity often misses fine-grained mismatches such as hallucinated objects, missing attributes, or incorrect relations. We propose MSD-Score, a reference-free metric that models image patch and text token embeddings as von Mises-Fisher mixtures on the unit hypersphere. Instead of treating each modality as a single point, MSD-Score formulates image-text matching as a multi-scale distributional scoring problem. Semantic discrepancies are quantified via a weighted bi-directional KL divergence and combined with global similarity in a multi-scale framework for both single- and multi-candidate evaluations. Extensive experiments show that MSD-Score achieves state-of-the-art correlation with human judgments among reference-free metrics. Beyond accuracy, its probabilistic formulation yields transparent and decomposable diagnostics of local grounding errors, providing a deterministic complementary signal to holistic similarity metrics and judge-based evaluators.