Piecewise-Linear Manifolds for Deep Metric Learning
Abstract
Unsupervised deep metric learning (UDML) focuses on learning a semantic representation space using only unlabeled data. This challenging problem requires accurately estimating the similarity between data points, which is used to supervise a deep network. For this purpose, we propose to model the high-dimensional data manifold using a piecewise-linear approximation, with each low-dimensional linear piece approximating the data manifold in a small neighborhood of a point. These neighborhoods are used to estimate similarity between data points. We empirically show that this similarity estimate correlates better with the ground truth than the similarity estimates of current state-of-the-art techniques. We also show that proxies, commonly used in supervised metric learning, can be used to model the piecewise-linear manifold in an unsupervised setting, helping improve performance. Our method outperforms existing unsupervised metric learning approaches on standard zero-shot image retrieval benchmarks.
Cite
Text
Bhatnagar and Ahuja. "Piecewise-Linear Manifolds for Deep Metric Learning." Conference on Parsimony and Learning, 2024.Markdown
[Bhatnagar and Ahuja. "Piecewise-Linear Manifolds for Deep Metric Learning." Conference on Parsimony and Learning, 2024.](https://mlanthology.org/cpal/2024/bhatnagar2024cpal-piecewiselinear/)BibTeX
@inproceedings{bhatnagar2024cpal-piecewiselinear,
title = {{Piecewise-Linear Manifolds for Deep Metric Learning}},
author = {Bhatnagar, Shubhang and Ahuja, Narendra},
booktitle = {Conference on Parsimony and Learning},
year = {2024},
pages = {269-281},
volume = {234},
url = {https://mlanthology.org/cpal/2024/bhatnagar2024cpal-piecewiselinear/}
}