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The paper introduces Semantic Interpretation of the Null-space Geometry (SING), a method to analyze and interpret the semantic content of invariants in classifiers by mapping network features to multi-modal vision language models. SING constructs equivalent images that map to identical outputs and assigns semantic interpretations to the variations, providing natural language descriptions and visual examples of induced semantic shifts. Experiments using SING reveal that ResNet50 leaks relevant semantic attributes to the null space, while DinoViT better maintains class semantics across the invariant space.
ResNet50 is shown to leak semantic attributes into its null space, while DinoViT better preserves class semantics, revealing critical differences in how these architectures handle semantic invariants.
All classifiers, including state-of-the-art vision models, possess invariants, partially rooted in the geometry of their linear mappings. These invariants, which reside in the null-space of the classifier, induce equivalent sets of inputs that map to identical outputs. The semantic content of these invariants remains vague, as existing approaches struggle to provide human-interpretable information. To address this gap, we present Semantic Interpretation of the Null-space Geometry (SING), a method that constructs equivalent images, with respect to the network, and assigns semantic interpretations to the available variations. We use a mapping from network features to multi-modal vision language models. This allows us to obtain natural language descriptions and visual examples of the induced semantic shifts. SING can be applied to a single image, uncovering local invariants, or to sets of images, allowing a breadth of statistical analysis at the class and model levels. For example, our method reveals that ResNet50 leaks relevant semantic attributes to the null space, whereas DinoViT, a ViT pretrained with self-supervised DINO, is superior in maintaining class semantics across the invariant space.