MSDS: Deep Structural Similarity with Multiscale Representation
arXiv cs.CV / 4/22/2026
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Key Points
- The paper investigates how spatial scale affects deep-feature perceptual similarity models used for image quality assessment (IQA), which prior work often assumes away by operating at a single resolution.
- It introduces a minimal multiscale extension of DeepSSIM called MSDS, where DeepSSIM is computed separately at each level of a feature pyramid and then fused using a small set of learnable global weights.
- Experiments on multiple benchmark datasets show statistically significant, consistent improvements over a single-scale baseline.
- The authors report that the multiscale method adds negligible additional complexity while empirically demonstrating that spatial scale is a meaningful factor in deep perceptual similarity modeling.
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