Title
Earth Mover Distance on superpixels
Abstract
Earth Mover Distance (EMD) is a popular distance to compute distances between Probability Density Functions (PDFs). It has been successfully applied in a wide selection of problems of image processing. This success comes from two reasons, a physical one, since it computes a physical cost to transport an element of mass between two images or two histograms, and a statistical one, since it is a cross-bin metric (as opposed to a bin-wise metric). In computer vision, these features are useful since small variation of illuminance can shift the histogram. However, histograms are not a sufficient statistic to discriminate images since they ignore all geometric correlations. In addition, transport also called flow of an histogram loose the information of geometric flow to warp one image on to an other. This paper proposes a new construction of EMD between images. This construction approximates the EMD between two images, by computing a pixel-wise transport at the complexity cost of computing an EMD between 1-D Histograms and preserves the geometrical and topological structure of the image. This construction simply relies on a segmentation of the image (also called superpixelization of the image). Results on matching on images shows the stability of the method even when the superpixelizations are highly inconsistent across images.
Year
DOI
Venue
2010
10.1109/ICIP.2010.5651708
Image Processing
Keywords
Field
DocType
computer vision,image matching,image segmentation,probability,EMD,Earth mover distance,computer vision,geometric correlations,illuminance,image matching,image processing,image segmentation,image warping,pixel-wise transport,probability density functions,Earth Mover Distance,Matching,Segmentation,Sparsity,Superpixel,Wasserstein metric
Computer vision,Histogram,Earth mover's distance,Image warping,Geometric flow,Pattern recognition,Computer science,Image processing,Image segmentation,Wasserstein metric,Artificial intelligence,Pixel
Conference
ISSN
ISBN
Citations 
1522-4880 E-ISBN : 978-1-4244-7993-1
978-1-4244-7993-1
7
PageRank 
References 
Authors
0.50
8
3
Name
Order
Citations
PageRank
Sylvain Boltz1465.61
Frank Nielsen21256118.37
Stefano Soatto34967350.34