Shape Tracking With Occlusions via Coarse-To-Fine Region-Based Sobolev Descent
Yanchao Yang, Ganesh Sundaramoorthi

TL;DR
This paper introduces a novel coarse-to-fine shape tracking method that models occlusions and dis-occlusions using a Sobolev-type metric on a Riemannian manifold, improving accuracy in complex video scenarios.
Contribution
It proposes a new Riemannian manifold with a Sobolev metric for shape optimization, enabling automatic coarse-to-fine deformations in shape tracking under occlusions.
Findings
Outperforms recent methods in shape accuracy during occlusion scenarios.
Effectively models self-occlusions and dis-occlusions in joint shape and appearance tracking.
Demonstrates robustness in complex backgrounds and radiance changes.
Abstract
We present a method to track the precise shape of an object in video based on new modeling and optimization on a new Riemannian manifold of parameterized regions. Joint dynamic shape and appearance models, in which a template of the object is propagated to match the object shape and radiance in the next frame, are advantageous over methods employing global image statistics in cases of complex object radiance and cluttered background. In cases of 3D object motion and viewpoint change, self-occlusions and dis-occlusions of the object are prominent, and current methods employing joint shape and appearance models are unable to adapt to new shape and appearance information, leading to inaccurate shape detection. In this work, we model self-occlusions and dis-occlusions in a joint shape and appearance tracking framework. Self-occlusions and the warp to propagate the template are coupled,…
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Taxonomy
TopicsAdvanced Vision and Imaging · 3D Shape Modeling and Analysis · Medical Image Segmentation Techniques
