CVMar 12, 2017

Co-occurrence Filter

arXiv:1703.04111v244 citations
Originality Incremental advance
AI Analysis

This addresses image processing challenges for applications like denoising and texture analysis, but it is incremental as it builds on existing bilateral filtering methods.

The paper tackles the problem of boundary preservation in image filtering by introducing the Co-occurrence Filter (CoF), which extends the Bilateral Filter to handle texture boundaries using a co-occurrence matrix, resulting in improved smoothing of textured regions while preserving boundaries.

Co-occurrence Filter (CoF) is a boundary preserving filter. It is based on the Bilateral Filter (BF) but instead of using a Gaussian on the range values to preserve edges it relies on a co-occurrence matrix. Pixel values that co-occur frequently in the image (i.e., inside textured regions) will have a high weight in the co-occurrence matrix. This, in turn, means that such pixel pairs will be averaged and hence smoothed, regardless of their intensity differences. On the other hand, pixel values that rarely co-occur (i.e., across texture boundaries) will have a low weight in the co-occurrence matrix. As a result, they will not be averaged and the boundary between them will be preserved. The CoF therefore extends the BF to deal with boundaries, not just edges. It learns co-occurrences directly from the image. We can achieve various filtering results by directing it to learn the co-occurrence matrix from a part of the image, or a different image. We give the definition of the filter, discuss how to use it with color images and show several use cases.

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