Learning to Generate Novel Classes for Deep Metric Learning
- URL: http://arxiv.org/abs/2201.01008v1
- Date: Tue, 4 Jan 2022 06:55:19 GMT
- Title: Learning to Generate Novel Classes for Deep Metric Learning
- Authors: Kyungmoon Lee, Sungyeon Kim, Seunghoon Hong, Suha Kwak
- Abstract summary: We introduce a new data augmentation approach that synthesizes novel classes and their embedding vectors.
We implement this idea by learning and exploiting a conditional generative model, which, given a class label and a noise, produces a random embedding vector of the class.
Our proposed generator allows the loss to use richer class relations by augmenting realistic and diverse classes, resulting in better generalization to unseen samples.
- Score: 24.048915378172012
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Deep metric learning aims to learn an embedding space where the distance
between data reflects their class equivalence, even when their classes are
unseen during training. However, the limited number of classes available in
training precludes generalization of the learned embedding space. Motivated by
this, we introduce a new data augmentation approach that synthesizes novel
classes and their embedding vectors. Our approach can provide rich semantic
information to an embedding model and improve its generalization by augmenting
training data with novel classes unavailable in the original data. We implement
this idea by learning and exploiting a conditional generative model, which,
given a class label and a noise, produces a random embedding vector of the
class. Our proposed generator allows the loss to use richer class relations by
augmenting realistic and diverse classes, resulting in better generalization to
unseen samples. Experimental results on public benchmark datasets demonstrate
that our method clearly enhances the performance of proxy-based losses.
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