4.6 Article

Local Laplacian Filters: Edge-Aware Image Processing with a Laplacian Pyramid

Journal

COMMUNICATIONS OF THE ACM
Volume 58, Issue 3, Pages 81-91

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/2723694

Keywords

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Funding

  1. NSERC Postdoctoral Fellowship
  2. Quanta T-Party
  3. NGA [NEGI-1582-04-0004]
  4. MURI [N00014-06-1-0734]

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The Laplacian pyramid is ubiquitous for decomposing images into multiple scales and is widely used for image analysis. However, because it is constructed with spatially invariant Gaussian kernels, the Laplacian pyramid is widely believed to be ill-suited for representing edges, as well as for edge-aware operations such as edge-preserving smoothing and tone mapping. To tackle these tasks, a wealth of alternative techniques and representations have been proposed, for example, anisotropic diffusion, neighborhood filtering, and specialized wavelet bases. While these methods have demonstrated successful results, they come at the price of additional complexity, often accompanied by higher computational cost or the need to postprocess the generated results. In this paper, we show state-of-the-art edge-aware processing using standard Laplacian pyramids. We characterize edges with a simple threshold on pixel values that allow us to differentiate large-scale edges from small-scale details. Building upon this result, we propose a set of image filters to achieve edge-preserving smoothing, detail enhancement, tone mapping, and inverse tone mapping. The advantage of our approach is its simplicity and flexibility, relying only on simple point-wise nonlinearities and small Gaussian convolutions; no optimization or postprocessing is required. As we demonstrate, our method produces consistently high-quality results, without degrading edges or introducing halos.

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