Title :
Efficient algorithms for inferences on Grassmann manifolds
Author :
Gallivan, Kyle A. ; Srivastava, Anuj ; Liu, Xiuwen ; Van Dooren, Paul
Author_Institution :
Florida State Univ., Tallahassee, FL, USA
fDate :
28 Sept.-1 Oct. 2003
Abstract :
Linear representations and linear dimension reduction techniques are very common in signal and image processing. Many such applications reduce to solving problems of stochastic optimizations or statistical inferences on the set of all subspaces, i.e. a Grassmann manifold. Central to solving them is the computation of an "exponential" map (for constructing geodesies) and its inverse on a Grassmannian. Here we suggest efficient techniques for these two steps and illustrate two applications: (i) For image-based object recognition, we define and seek an optimal linear representation using a Metropolis-Hastings type, stochastic search algorithm on a Grassmann manifold, (ii) For statistical inferences, we illustrate computation of sample statistics, such as mean and variances, on a Grassmann manifold.
Keywords :
differential geometry; image recognition; image representation; object recognition; optimisation; search problems; stochastic processes; Grassmann manifold; Grassmann manifolds; Metropolis-Hastings type algorithm; image processing; image-based object recognition; linear dimension reduction techniques; linear representations; signal processing; statistical inferences; stochastic optimizations; stochastic search algorithm; Geometry; Geophysics computing; Independent component analysis; Inference algorithms; Linear systems; Manifolds; Sensor arrays; Signal processing; Signal processing algorithms; Stochastic processes;
Conference_Titel :
Statistical Signal Processing, 2003 IEEE Workshop on
Print_ISBN :
0-7803-7997-7
DOI :
10.1109/SSP.2003.1289408