Grafit: Learning Fine-grained Image Representations With Coarse Labels | Awesome Learning to Hash Add your paper to Learning2Hash

Grafit: Learning Fine-grained Image Representations With Coarse Labels

Hugo Touvron, Alexandre Sablayrolles, Matthijs Douze, Matthieu Cord, Hervé Jégou . Arxiv 2020 – 2 citations

[Paper]   Search on Google Scholar   Search on Semantic Scholar
Datasets Evaluation Self-Supervised Supervised

This paper tackles the problem of learning a finer representation than the one provided by training labels. This enables fine-grained category retrieval of images in a collection annotated with coarse labels only. Our network is learned with a nearest-neighbor classifier objective, and an instance loss inspired by self-supervised learning. By jointly leveraging the coarse labels and the underlying fine-grained latent space, it significantly improves the accuracy of category-level retrieval methods. Our strategy outperforms all competing methods for retrieving or classifying images at a finer granularity than that available at train time. It also improves the accuracy for transfer learning tasks to fine-grained datasets, thereby establishing the new state of the art on five public benchmarks, like iNaturalist-2018.

Similar Work