Differential and Numerically Invariant Signature Curves Applied to Object Recognition

作者:Eugenio Calabi, Peter J. Olver, Chehrzad Shakiban, Allen Tannenbaum, Steven Haker

摘要

We introduce a new paradigm, the differential invariant signature curve or manifold, for the invariant recognition of visual objects. A general theorem of É. Cartan implies that two curves are related by a group transformation if and only if their signature curves are identical. The important examples of the Euclidean and equi-affine groups are discussed in detail. Secondly, we show how a new approach to the numerical approximation of differential invariants, based on suitable combination of joint invariants of the underlying group action, allows one to numerically compute differential invariant signatures in a fully group-invariant manner. Applications to a variety of fundamental issues in vision, including detection of symmetries, visual tracking, and reconstruction of occlusions, are discussed.

论文关键词:object recognition, symmetry group, differential invariant, joint invariant, signature curve, Euclidean group, equi-affine group, numerical approximation, curve shortening flow, snake

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论文官网地址:https://doi.org/10.1023/A:1007992709392