WebVision 2020 VIRTUAL
Paper Session - Workshop Papers : Paper #1 (10:15 - 10:19)
Paper Title: Smooth Proxy-Anchor Loss for Noisy Metric Learning
Authors: Carlos Roig, David Varas, Issey Masuda, Juan Carlos Riveiro, Elisenda Bou-Balust
Email: {carlos,david.varas,issey,eli}@vilynx.com
Short Description: Smooth Proxy-Anchor Loss for Noisy Metric Learning tackles the problem of having noisy samples in a metric learning problem with a novel architecture.
Keywords: Metric Learning, Noisy data.
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Abstract :
Many industrial applications use Metric Learning as a way to circumvent scalability issues when designing systems with a high number of classes. Because of this, this
field of research is attracting a lot of interest from the academic and non-academic communities. Such industrial applications require large-scale datasets, which are usually
generated with web data and, as a result, often contain a high number of noisy labels. While Metric Learning systems are sensitive to noisy labels, this is usually not tackled
in the literature, that relies on manually annotated datasets.
In this work, we propose a Metric Learning method that is able to overcome the presence of noisy labels using our
novel Smooth Proxy-Anchor Loss. We also present an architecture that uses the aforementioned loss with a two-phase learning procedure. First, we train a confidence module
that computes sample class confidences. Second, these confidences are used to weight the influence of each sample for the training of the embeddings. This results in a system that
is able to provide robust sample embeddings.
We compare the performance of the described method with current state-of-the-art Metric Learning losses (proxy-based and pair-based), when trained with a dataset
containing noisy labels. The results showcase an improvement of 2.63 and 3.29 in Recall@1 with respect to MultiSimilarity and Proxy-Anchor Loss respectively, proving that our
method outperforms the state-of-the-art of Metric Learning in noisy labeling conditions.