A Binary Characterization Method for Shape Convexity and Applications
Convexity prior is one of the main cue for human vision and shape completion with important applications in image processing, computer vision. This paper focuses on characterization methods for convex objects and applications in image processing. We present a new method for convex objects representa...
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Zusammenfassung: | Convexity prior is one of the main cue for human vision and shape completion
with important applications in image processing, computer vision. This paper
focuses on characterization methods for convex objects and applications in
image processing. We present a new method for convex objects representations
using binary functions, that is, the convexity of a region is equivalent to a
simple quadratic inequality constraint on its indicator function. Models are
proposed firstly by incorporating this result for image segmentation with
convexity prior and convex hull computation of a given set with and without
noises. Then, these models are summarized to a general optimization problem on
binary function(s) with the quadratic inequality. Numerical algorithm is
proposed based on linearization technique, where the linearized problem is
solved by a proximal alternating direction method of multipliers with
guaranteed convergent. Numerical experiments demonstrate the efficiency and
effectiveness of the proposed methods for image segmentation and convex hull
computation in accuracy and computing time. |
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DOI: | 10.48550/arxiv.2203.11395 |