Title :
Jensen-Bregman LogDet Divergence with Application to Efficient Similarity Search for Covariance Matrices
Author :
Cherian, Arun ; Sra, Suvrit ; Banerjee, Adrish ; Papanikolopoulos, Nikolaos
Author_Institution :
Dept. of Comput. Sci. & Eng., Univ. of Minnesota, Minneapolis, MN, USA
Abstract :
Covariance matrices have found success in several computer vision applications, including activity recognition, visual surveillance, and diffusion tensor imaging. This is because they provide an easy platform for fusing multiple features compactly. An important task in all of these applications is to compare two covariance matrices using a (dis)similarity function, for which the common choice is the Riemannian metric on the manifold inhabited by these matrices. As this Riemannian manifold is not flat, the dissimilarities should take into account the curvature of the manifold. As a result, such distance computations tend to slow down, especially when the matrix dimensions are large or gradients are required. Further, suitability of the metric to enable efficient nearest neighbor retrieval is an important requirement in the contemporary times of big data analytics. To alleviate these difficulties, this paper proposes a novel dissimilarity measure for covariances, the Jensen-Bregman LogDet Divergence (JBLD). This divergence enjoys several desirable theoretical properties and at the same time is computationally less demanding (compared to standard measures). Utilizing the fact that the square root of JBLD is a metric, we address the problem of efficient nearest neighbor retrieval on large covariance datasets via a metric tree data structure. To this end, we propose a K-Means clustering algorithm on JBLD. We demonstrate the superior performance of JBLD on covariance datasets from several computer vision applications.
Keywords :
computer vision; covariance matrices; image retrieval; pattern clustering; video surveillance; JBLD; Jensen-Bregman LogDet divergence; Riemannian manifold; Riemannian metric; big data analytics; computer vision applications; covariance matrices; dissimilarity measure; distance computations; k-means clustering algorithm; large covariance datasets; nearest neighbor retrieval; similarity search; video surveillance; Computer vision; Covariance matrix; Eigenvalues and eigenfunctions; Manifolds; Measurement; Standards; Symmetric matrices; Bregman divergence; LogDet divergence; Region covariance descriptors; activity recognition; image search; nearest neighbor search; video surveillance; Algorithms; Analysis of Variance; Cluster Analysis; Computer Simulation; Face; Humans; Image Processing, Computer-Assisted; Pattern Recognition, Automated;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2012.259