Sparse PDF Maps for Non-linear Multi-resolution Image Operations
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We introduce a new type of multi-resolution image pyramid for high-resolution images called sparse pdf maps (sPDF-maps). Each pyramid level consists of a sparse encoding of continuous probability density functions (pdfs) of pixel neighborhoods in the original image. The encoded pdfs enable the accurate computation of non-linear image operations directly in any pyramid level with proper pre-filtering for anti-aliasing, without accessing higher or lower resolutions. The sparsity of sPDF-maps makes them feasible for gigapixel images, while enabling direct evaluation of a variety of non-linear operators from the same representation. We illustrate this versatility for antialiased color mapping, O(n) local Laplacian filters, smoothed local histogram filters (e.g., median or mode filters), and bilateral filters.
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- Hadwiger, Markus
- Sicat, Ronell
- Beyer, Johanna
- Krüger, Jens
- Möller, Torsten
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Category |
Journal Paper |
Divisions |
Visualization and Data Analysis |
Journal or Publication Title |
ACM Transactions on Graphics |
ISSN |
0730-0301 |
Publisher |
ACM |
Place of Publication |
New York, NY, USA |
Page Range |
133:1-133:12 |
Number |
6 |
Volume |
31 |
Date |
November 2012 |
Official URL |
http://doi.acm.org/10.1145/2366145.2366152 |
Export |
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