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Efficient Spatially-Variant Convolution via Differentiable Sparse Kernel Complex

Published: December 4, 2025 | arXiv ID: 2512.04556v1

By: Zhizhen Wu, Zhe Cao, Yuchi Huo

Potential Business Impact:

Makes phone cameras do fancy effects faster.

Business Areas:
DSP Hardware

Image convolution with complex kernels is a fundamental operation in photography, scientific imaging, and animation effects, yet direct dense convolution is computationally prohibitive on resource-limited devices. Existing approximations, such as simulated annealing or low-rank decompositions, either lack efficiency or fail to capture non-convex kernels. We introduce a differentiable kernel decomposition framework that represents a target spatially-variant, dense, complex kernel using a set of sparse kernel samples. Our approach features (i) a decomposition that enables differentiable optimization of sparse kernels, (ii) a dedicated initialization strategy for non-convex shapes to avoid poor local minima, and (iii) a kernel-space interpolation scheme that extends single-kernel filtering to spatially varying filtering without retraining and additional runtime overhead. Experiments on Gaussian and non-convex kernels show that our method achieves higher fidelity than simulated annealing and significantly lower cost than low-rank decompositions. Our approach provides a practical solution for mobile imaging and real-time rendering, while remaining fully differentiable for integration into broader learning pipelines.

Country of Origin
🇨🇳 China

Page Count
12 pages

Category
Computer Science:
Graphics