Beyond Convolution: A Taxonomy of Structured Operators for Learning-Based Image Processing
arXiv cs.CV / 3/13/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The paper presents a systematic taxonomy of operators that extend or replace standard convolution in learning-based image processing, organizing them into five families: decomposition-based, adaptive weighted, basis-adaptive, integral/kernel, and attention-based operators.
- For each family, it provides formal definitions, analyzes how each differs from convolution in terms of structure, and discusses which tasks (image-to-image vs image-to-label) each is best suited for.
- It offers a comparative analysis across dimensions such as linearity, locality, equivariance, computational cost, and outlines open challenges and future directions.
- The article positions these alternatives as a guide for researchers and practitioners to rethink model design beyond fixed convolutions, potentially enabling more expressive and adaptable image-processing pipelines.
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