Title :
Modeling Self-Occlusions in Dynamic Shape and Appearance Tracking
Author :
Yanchao Yang ; Sundaramoorthi, Ganesh
Abstract :
We present a method to track the precise shape of a dynamic object in video. 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 complex 3D object motion and relative viewpoint change, self-occlusions and dis-occlusions of the object are prominent, and current methods employing joint shape and appearance models are unable to accurately 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. 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.
Keywords :
image motion analysis; object tracking; shape recognition; statistical analysis; video signal processing; appearance tracking; cluttered background; complex 3D object motion; complex object radiance; disocclusions; dynamic object; dynamic shape tracking; global image statistics; inaccurate shape detection; joint shape-appearance models; relative viewpoint change; self-occlusions modeling; video; Computational modeling; Joints; Noise; Optical imaging; Optimization; Shape; Three-dimensional displays; dis-occlusions; level set methods; object tracking; occlusions; optical flow; shape tracking;
Conference_Titel :
Computer Vision (ICCV), 2013 IEEE International Conference on
Conference_Location :
Sydney, VIC
DOI :
10.1109/ICCV.2013.32