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Pairwise Matching of Intermediate Representations for Fine-grained Explainability

28 March 2025
Lauren Shrack
T. Haucke
Antoine Salaün
Arjun Subramonian
Sara Beery
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Abstract

The differences between images belonging to fine-grained categories are often subtle and highly localized, and existing explainability techniques for deep learning models are often too diffuse to provide useful and interpretable explanations. We propose a new explainability method (PAIR-X) that leverages both intermediate model activations and backpropagated relevance scores to generate fine-grained, highly-localized pairwise visual explanations. We use animal and building re-identification (re-ID) as a primary case study of our method, and we demonstrate qualitatively improved results over a diverse set of explainability baselines on 35 public re-ID datasets. In interviews, animal re-ID experts were in unanimous agreement that PAIR-X was an improvement over existing baselines for deep model explainability, and suggested that its visualizations would be directly applicable to their work. We also propose a novel quantitative evaluation metric for our method, and demonstrate that PAIR-X visualizations appear more plausible for correct image matches than incorrect ones even when the model similarity score for the pairs is the same. By improving interpretability, PAIR-X enables humans to better distinguish correct and incorrect matches. Our code is available at:this https URL

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@article{shrack2025_2503.22881,
  title={ Pairwise Matching of Intermediate Representations for Fine-grained Explainability },
  author={ Lauren Shrack and Timm Haucke and Antoine Salaün and Arjun Subramonian and Sara Beery },
  journal={arXiv preprint arXiv:2503.22881},
  year={ 2025 }
}
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