location: Current position: Home >> Scientific Research >> Paper Publications

Path-Based Analysis for Structure-Preserving Image Filtering

Hits:

Indexed by:Journal Papers

Date of Publication:2020-02-01

Journal:JOURNAL OF MATHEMATICAL IMAGING AND VISION

Included Journals:EI、SCIE

Volume:62

Issue:2

Page Number:253-271

ISSN No.:0924-9907

Key Words:Structure-preserving image filtering; Distance transform; Gestalt principles of grouping

Abstract:Structure-preserving image filtering is an image smoothing technique that aims to preserve prominent structures while removing unwanted details in natural images. However, relevant studies mainly focus on small variances/fluctuations suppression and are vulnerable to separate pixels connected by some low-contrast edges or cluster pixels which exhibit strong differences between neighbors in highly textured region.Inspired by the fact that the human visual system significantly outperforms manually designed operators in extracting meaningful structures from natural scenes, we present an efficient structure-preserving filtering method which integrates similarity, proximity and continuation principles of human perception to accomplish high-contrast details (textures/noises) smoothing. Additionally, a Liebig's law of minimum-based distance transform is presented to seamlessly incorporate the three properties for the description of the filter kernel. Experiments demonstrate that our distance transform keeps a clustering-like manner of separating different image pixels and grouping similar ones with the awareness of structure. When integrating this affinity measure into the bilateral-filter-like framework, our method can efficiently remove high-contrast textures/noises while preserving major structures.

Next One:Towards path-based semantic dissimilarity estimation for scene representation using bottleneck analysis