Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Do Image-Text Metrics Respect Semantic Invariances?

About

Reference-free image-to-text evaluators are now standard for scoring image-caption alignment, yet it is unclear whether they respect semantic invariances. We present an invariance probe on five popular evaluators (CLIPScore, PAC-S, UMIC, FLEUR, and a deterministic LLM judge) under semantics-preserving perturbations along three axes -- spatial (flips, context-preserving repositioning, light rotations), object (scale, category), and socio-linguistic framing (cultural/economic adjectives with neutral and length-matched controls). Across curated slices of three detection datasets and three caption evaluation suites, we find consistent non-semantic sensitivities, where benign spatial edits and simple phrasing changes shift scores by $\approx$6--9\% on average, and for systems separated by just 0.7\%, these shifts can cause ranking flips in up to $\sim$37\% of cases, particularly under spatial changes. A small human study also supports this finding and confirms that annotators generally judge perturbed pairs as equally correct, so these shifts reflect metric behavior rather than semantic change. We further propose invariance-calibrated scoring, a post-hoc adjustment that roughly halves median absolute sensitivity while retaining correlation with learned caption evaluators.

Amit Agarwal, Hitesh Laxmichand Patel, Meizhu Liu, Jyotika Singh, Karan Dua, Hansa Meghwani, Matthew Rowe, Michael Avendi, Yassi Abbasi, Tao Sheng, Sujith Ravi, Dan Roth• 2026

Related benchmarks

TaskDatasetResultRank
Image Captioning EvaluationPascal-50S--
44
Spatial Sensitivity EvaluationCOCO
% Delta4.4
10
Spatial Sensitivity EvaluationOpenImages
Percentage Change (Δ)4.4
10
Spatial Sensitivity EvaluationObjects365
% Delta4.9
10
Image-Text Evaluator Robustness (Economic Sensitivity)Composite
Median % Change vs Neutral-0.6
5
Risk of Ranking Flip assessment for Image-Text evaluatorsCOCO OpenImages Objects365 aggregated (dev)
Vertical Flip Risk16
5
Vision-Language Evaluation Metric Sensitivity AnalysisFlickr8k-CF cultural subset
Median % Change vs Neutral-0.7
5
Vision-Language Evaluation Metric Sensitivity AnalysisPascal-50S cultural subset
Median Sensitivity (%)-0.7
5
Image-Text Evaluator Robustness (Economic Sensitivity)Flickr8K-CF
Median % Change vs. Neutral-1.3
5
Cultural Modifier Sensitivity AuditCOCO
Sensitivity Score (American)0.8
5
Showing 10 of 13 rows

Other info

Follow for update