Lie-Struck: Affine Tracking on Lie Groups Using Structured SVM

WACV(2015)

Cited 8|Views25
No score
Abstract
This paper presents a novel and reliable tracking-by detection method for image regions that undergo affine transformations such as translation, rotation, scale, dilatation and shear deformations, which span the six degrees of freedom of motion. Our method takes advantage of the intrinsic Lie group structure of the 2D affine motion matrices and imposes this motion structure on a kernelized structured output SVM classifier that provides an appearance based prediction function to directly estimate the object transformation between frames using geodesic distances on manifolds unlike the existing methods proceeding by linearizing the motion. We demonstrate that these combined motion and appearance model structures greatly improve the tracking performance while an incorporated particle filter on the motion hypothesis space keeps the computational load feasible. Experimentally, we show that our algorithm is able to outperform state-of-the-art affine trackers in various scenarios.
More
Translated text
Key words
lie groups,particle filtering (numerical methods),appearance based prediction function,motion hypothesis space,lie-struck,motion structure,affine tracking,2d affine motion matrices,kernelized structured output svm classifier,particle filter,intrinsic lie group structure,tracking-by detection method,object tracking,object detection,affine transformations,image regions,geodesic distances,affine transforms,support vector machines,object transformation estimation,image motion analysis,computer vision
AI Read Science
Must-Reading Tree
Example
Generate MRT to find the research sequence of this paper
Chat Paper
Summary is being generated by the instructions you defined