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Mutual Information Divergence: A Unified Metric for Multimodal Generative Models

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Text-to-image generation and image captioning are recently emerged as a new experimental paradigm to assess machine intelligence. They predict continuous quantity accompanied by their sampling techniques in the generation, making evaluation complicated and intractable to get marginal distributions. Based on a recent trend that multimodal generative evaluations exploit a vison-and-language pre-trained model, we propose the negative Gaussian cross-mutual information using the CLIP features as a unified metric, coined by Mutual Information Divergence (MID). To validate, we extensively compare it with competing metrics using carefully-generated or human-annotated judgments in text-to-image generation and image captioning tasks. The proposed MID significantly outperforms the competitive methods by having consistency across benchmarks, sample parsimony, and robustness toward the exploited CLIP model. We look forward to seeing the underrepresented implications of the Gaussian cross-mutual information in multimodal representation learning and the future works based on this novel proposition.

Jin-Hwa Kim, Yunji Kim, Jiyoung Lee, Kang Min Yoo, Sang-Woo Lee• 2022

Related benchmarks

TaskDatasetResultRank
Image Captioning EvaluationFlickr8K Expert (test)
Kendall tau_c54.9
76
Image Captioning EvaluationFlickr8k Expert
Kendall Tau-c (tau_c)54.9
73
Image Captioning EvaluationPascal-50S (test)
HC67
66
Image Captioning EvaluationFlickr8K-CF (test)
Kendall tau_b37.3
65
Image Captioning EvaluationFlickr8K-CF
Kendall-b Correlation (tau_b)37.3
62
Image Captioning EvaluationPascal-50S
Mean Score85.2
39
Hallucination DetectionFOIL
Accuracy (4 Refs)93.5
32
Image Captioning Hallucination DetectionFOIL (test)
Accuracy90.5
28
Correlation with human judgmentFlickr8K-CF
Tau B37.3
26
Object Hallucination DetectionFOIL-COCO (test)
Accuracy90.5
20
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