CVMGMar 30, 2016

Möbius Invariants of Shapes and Images

arXiv:1603.09335v27 citations
AI Analysis

This addresses object recognition challenges in computer vision and biological image analysis, but appears incremental as it builds on known Möbius invariants.

The paper tackles the problem of recognizing objects in images despite transformations like those from imaging technologies or growth, by developing a Möbius-invariant algorithm for shape recognition and extending it to create a signature for grey-scale images, demonstrating efficacy on sets of curves.

Identifying when different images are of the same object despite changes caused by imaging technologies, or processes such as growth, has many applications in fields such as computer vision and biological image analysis. One approach to this problem is to identify the group of possible transformations of the object and to find invariants to the action of that group, meaning that the object has the same values of the invariants despite the action of the group. In this paper we study the invariants of planar shapes and images under the Möbius group $\mathrm{PSL}(2,\mathbb{C})$, which arises in the conformal camera model of vision and may also correspond to neurological aspects of vision, such as grouping of lines and circles. We survey properties of invariants that are important in applications, and the known Möbius invariants, and then develop an algorithm by which shapes can be recognised that is Möbius- and reparametrization-invariant, numerically stable, and robust to noise. We demonstrate the efficacy of this new invariant approach on sets of curves, and then develop a Möbius-invariant signature of grey-scale images.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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