Mapping a Manifold of Perceptual Observations 论文

1997引用 253
Advanced Vision and ImagingImage Retrieval and Classification TechniquesFace and Expression Recognition

摘要

Nonlinear dimensionality reduction is formulated here as the problem of trying to find a Euclidean feature-space embedding of a set of observations that preserves as closely as possibletheir intrinsic metric structure -- the distancesbetween points on the observation manifold as measured along geodesic paths. Our isometric feature mapping procedure, or isomap, is able to reliably recover low-dimensional nonlinear structure in realistic perceptual data sets, such as a manifold of face images, where conventional global mapping methods find only local minima. The recovered map provides a canonical set of globally meaningful features, which allows perceptual transformations such as interpolation, extrapolation, and analogy -- highly nonlinear transformations in the original observation space -- to be computed with simple linear operations in feature space. 1 Introduction In psychological or computational research on perceptual categorization, it is generally taken for granted t...