Shape Tracking With Occlusions via Coarse-To-Fine Region-Based Sobolev Descent

08/21/2012
by   Yanchao Yang, et al.
0

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, thus a joint problem is formulated. We derive a coarse-to-fine optimization scheme, advantageous in object tracking, that initially perturbs the template by coarse perturbations before transitioning to finer-scale perturbations, traversing all scales, seamlessly and automatically. The scheme is a gradient descent on a novel infinite-dimensional Riemannian manifold that we introduce. The manifold consists of planar parameterized regions, and the metric that we introduce is a novel Sobolev-type metric defined on infinitesimal vector fields on regions. The metric has the property of resulting in a gradient descent that automatically favors coarse-scale deformations (when they reduce the energy) before moving to finer-scale deformations. Experiments on video exhibiting occlusion/dis-occlusion, complex radiance and background show that occlusion/dis-occlusion modeling leads to superior shape accuracy compared to recent methods employing joint shape/appearance models or employing global statistics.

READ FULL TEXT

page 5

page 11

page 12

page 13

page 14

page 16

page 17

page 18

research
10/29/2016

Multi-Camera Occlusion and Sudden-Appearance-Change Detection Using Hidden Markovian Chains

This paper was originally submitted to Xinova as a response to a Request...
research
02/05/2016

Search Tracker: Human-derived object tracking in-the-wild through large-scale search and retrieval

Humans use context and scene knowledge to easily localize moving objects...
research
12/14/2017

Multi-appearance Segmentation and Extended 0-1 Program for Dense Small Object Tracking

Aiming to address the fast multi-object tracking for dense small object ...
research
03/27/2021

An Efficiently Coupled Shape and Appearance Prior for Active Contour Segmentation

This paper proposes a novel training model based on shape and appearance...
research
08/09/2023

Robust Object Modeling for Visual Tracking

Object modeling has become a core part of recent tracking frameworks. Cu...
research
01/10/2023

ROBUSfT: Robust Real-Time Shape-from-Template, a C++ Library

Tracking the 3D shape of a deforming object using only monocular 2D visi...
research
03/24/2016

Coarse-to-Fine Segmentation With Shape-Tailored Scale Spaces

We formulate a general energy and method for segmentation that is design...

Please sign up or login with your details

Forgot password? Click here to reset