Title of article :
Feature-based Approach for Dense Segmentation and Estimation of Large
Disparity Motion
Author/Authors :
JOSH WILLS، نويسنده , , SAMEER AGARWAL AND SERGE BELONGIE، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
We present a novel framework for motion segmentation that combines the concepts of layer-based
methods and feature-based motion estimation. We estimate the initial correspondences by comparing vectors of
filter outputs at interest points, from which we compute candidate scene relations via random sampling of minimal
subsets of correspondences. We achieve a dense, piecewise smooth assignment of pixels to motion layers using a
fast approximate graphcut algorithm based on a Markov random field formulation.We demonstrate our approach on
image pairs containing large inter-frame motion and partial occlusion. The approach is efficient and it successfully
segments scenes with inter-frame disparities previously beyond the scope of layer-based motion segmentation
methods.We also present an extension that accounts for the case of non-planar motion, in which we use our planar
motion segmentation results as an initialization for a regularized Thin Plate Spline fit. In addition, we present
applications of our method to automatic object removal and to structure from motion.
Keywords :
Markov random field , layer-based motion , metric labeling problem , Periodic motion , Motion Segmentation , RANSAC , Graph cuts
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION