Efficient Point-to-Subspace Query in ℓ^1: Theory and Applications in Computer Vision

11/05/2012
by   Ju Sun, et al.
0

Motivated by vision tasks such as robust face and object recognition, we consider the following general problem: given a collection of low-dimensional linear subspaces in a high-dimensional ambient (image) space and a query point (image), efficiently determine the nearest subspace to the query in ℓ^1 distance. We show in theory that Cauchy random embedding of the objects into significantly-lower-dimensional spaces helps preserve the identity of the nearest subspace with constant probability. This offers the possibility of efficiently selecting several candidates for accurate search. We sketch preliminary experiments on robust face and digit recognition to corroborate our theory.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset