Title :
Shape Tracking with Occlusions via Coarse-to-Fine Region-Based Sobolev Descent
Author :
Yanchao Yang ; Sundaramoorthi, Ganesh
Author_Institution :
Dept. of Electr. Eng., King Abdullah Univ. of Sci. & Technol., Thuwal, Saudi Arabia
Abstract :
We present a method to track the shape of an object from video. The method uses a joint shape and appearance model of the object, which is propagated to match shape and radiance in subsequent frames, determining object shape. Self-occlusions and dis-occlusions of the object from camera and object motion pose difficulties to joint shape and appearance models in tracking. They 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 model are coupled, thus we formulate a joint optimization problem. We derive a coarse-to-fine optimization method, advantageous in tracking, that initially perturbs the model by coarse perturbations before transitioning to finer-scale perturbations seamlessly. This coarse-to-fine behavior is automatically induced by 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 metric. Experiments on video exhibiting occlusions/dis-occlusions, complex radiance and background show that occlusion/dis-occlusion modeling leads to superior shape accuracy.
Keywords :
edge detection; gradient methods; image matching; image motion analysis; image segmentation; object detection; object tracking; optimisation; pose estimation; video signal processing; Sobolev descent; Sobolev metric; appearance model; appearance tracking framework; coarse perturbations; coarse-to-fine optimization method; coarse-to-fine region; gradient descent; infinite-dimensional Riemannian manifold; joint optimization problem; joint shape; object motion pose; planar parameterized regions; radiance matching; self-occlusions; shape detection; shape matching; shape tracking framework; video; Joints; Manifolds; Optical imaging; Optimization; Shape; Tracking; Object segmentation from video; deformable templates; object tracking; occlusions; optical flow; shape metrics;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2014.2360380