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Learning Object-Independent Modes of Variation with Feature Flow Fields
Massachusetts Institute of Technology, AI-Memo (2001)
  • Erik G Learned-Miller, University of Massachusetts - Amherst
  • Kinh Tieu, Massachusetts Institute of Technology
  • Chris Stauffer, Massachusetts Institute of Technology
Abstract

We present a unifying framework in which object-independent modes of variation are learned from continuous-time data such as video sequences. These modes of variation can be used as generators to produce a manifold of images of a new object from a single example of that object. We develop the framework in the context of a well-known example: analyzing the modes of spatial deformations of a scene under camera movement. Our method learns a close approximation to the standard affine deformations that are expected from the geometry of the situation, and does so in a completely unsupervised (i.e. ignorant of the geometry of the situation) fashion. We stress that it is learning a parameterization, not just the parameter values, of the data. We then demonstrate how we have used the same framework to derive a novel data-driven model of joint color change in images due to common lighting variations. The model is superior to previous models of color change in describing non-linear color changes due to lighting.

Disciplines
Publication Date
2001
Citation Information
Erik G Learned-Miller, Kinh Tieu and Chris Stauffer. "Learning Object-Independent Modes of Variation with Feature Flow Fields" Massachusetts Institute of Technology, AI-Memo Vol. AIM-2001-021 (2001)
Available at: http://works.bepress.com/erik_learned_miller/6/