Mapping a Manifold of Perceptual Observations
Abstract
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 possible their intrinsic metric structure - the distances between 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.
Cite
Text
Tenenbaum. "Mapping a Manifold of Perceptual Observations." Neural Information Processing Systems, 1997.Markdown
[Tenenbaum. "Mapping a Manifold of Perceptual Observations." Neural Information Processing Systems, 1997.](https://mlanthology.org/neurips/1997/tenenbaum1997neurips-mapping/)BibTeX
@inproceedings{tenenbaum1997neurips-mapping,
title = {{Mapping a Manifold of Perceptual Observations}},
author = {Tenenbaum, Joshua B.},
booktitle = {Neural Information Processing Systems},
year = {1997},
pages = {682-688},
url = {https://mlanthology.org/neurips/1997/tenenbaum1997neurips-mapping/}
}