Supporting Large-scale Image Recognition With Out-of-domain Samples | Awesome Learning to Hash Add your paper to Learning2Hash

Supporting Large-scale Image Recognition With Out-of-domain Samples

Christof Henkel, Philipp Singer . Arxiv 2020 – 5 citations

[Paper]   Search on Google Scholar   Search on Semantic Scholar
Scalability

This article presents an efficient end-to-end method to perform instance-level recognition employed to the task of labeling and ranking landmark images. In a first step, we embed images in a high dimensional feature space using convolutional neural networks trained with an additive angular margin loss and classify images using visual similarity. We then efficiently re-rank predictions and filter noise utilizing similarity to out-of-domain images. Using this approach we achieved the 1st place in the 2020 edition of the Google Landmark Recognition challenge.

Similar Work