Reliable 2D Tracking using good texture and edge features for Robotic Vision

A. H. Abdul Hafez, Visesh Chari

Abstract


We present an algorithm for highly reliable tracking of planar objects using visual cues liketexture and contour in presence of feature correspondence errors. These two cues are integrated using aprobabilistic formulation. The integration is based on quality goodness factors. The goodness criterionis a generalization of the well known “good features to track” concept to the both point and edgecases. The motion model of the object is computed as a homography between reference and currentframes. A probabilistic formulation of the problem is proposed and implemented using particle filters.Tracking for geometric computation is useful in applications like object grasping, 3D reconstruction,augmented reality etc. The algorithm combines contour and texture information in a novel manner toachieve robustness that outperforms the state of the art methods, which is justified by the results ofexperiments.

Keywords


Visual tracking, Texture tracker, Contour tracker, Probabilistic integration.

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