Title
A General Framework for Bilateral and Mean Shift Filtering.
Abstract
We present a generalization of the bilateral filter that can be applied to feature-preserving smoothing of signals on images, meshes, and other domains within a single unified framework. Our discretization is competitive with state-of-the-art smoothing techniques in terms of both accuracy and speed, is easy to implement, and has parameters that are straightforward to understand. Unlike previous bilateral filters developed for meshes and other irregular domains, our construction reduces exactly to the image bilateral on rectangular domains and comes with a rigorous foundation in both the smooth and discrete settings. These guarantees allow us to construct unconditionally convergent mean-shift schemes that handle a variety of extremely noisy signals. We also apply our framework to geometric edge-preserving effects like feature enhancement and show how it is related to local histogram techniques.
Year
Venue
Field
2014
CoRR
Computer vision,Histogram,Discretization,Mathematical optimization,Polygon mesh,Computer science,Filter (signal processing),Smoothing,Artificial intelligence,Mean-shift,Bilateral filter
DocType
Volume
Citations 
Journal
abs/1405.4734
10
PageRank 
References 
Authors
0.50
0
4
Name
Order
Citations
PageRank
Justin Solomon182748.48
Keenan Crane258629.28
Adrian Butscher342313.41
Chris Wojtan468028.42