Global Minimum for a Finsler Elastica Minimal Path Approach
Da Chen, Jean-Marie Mirebeau, Laurent D. Cohen

TL;DR
This paper introduces a novel curvature-penalized minimal path model using a Finsler elastica metric, enabling globally optimal paths that incorporate curvature and orientation, with efficient computation via the fast marching method.
Contribution
It presents a new Finsler elastica metric for curvature-penalized geodesic energy minimization, extending classical minimal path models to include curvature considerations.
Findings
Successfully added curvature penalization to geodesic energy.
Efficient computation of global minima using fast marching method.
Effective in applications like contour detection and tubular structure extraction.
Abstract
In this paper, we propose a novel curvature-penalized minimal path model via an orientation-lifted Finsler metric and the Euler elastica curve. The original minimal path model computes the globally minimal geodesic by solving an Eikonal partial differential equation (PDE). Essentially, this first-order model is unable to penalize curvature which is related to the path rigidity property in the classical active contour models. To solve this problem, we present an Eikonal PDE-based Finsler elastica minimal path approach to address the curvature-penalized geodesic energy minimization problem. We were successful at adding the curvature penalization to the classical geodesic energy. The basic idea of this work is to interpret the Euler elastica bending energy via a novel Finsler elastica metric that embeds a curvature penalty. This metric is non-Riemannian, anisotropic and asymmetric, and is…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
