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Hierarchical Average Precision Training for Pertinent Image Retrieval

2022-07-05 07:55:18
Elias Ramzi (CNAM), Nicolas Audebert (CNAM), Nicolas Thome (CNAM), Clément Rambour (CNAM), Xavier Bitot

Abstract

Image Retrieval is commonly evaluated with Average Precision (AP) or Recall@k. Yet, those metrics, are limited to binary labels and do not take into account errors' severity. This paper introduces a new hierarchical AP training method for pertinent image retrieval (HAP-PIER). HAPPIER is based on a new H-AP metric, which leverages a concept hierarchy to refine AP by integrating errors' importance and better evaluate rankings. To train deep models with H-AP, we carefully study the problem's structure and design a smooth lower bound surrogate combined with a clustering loss that ensures consistent ordering. Extensive experiments on 6 datasets show that HAPPIER significantly outperforms state-of-the-art methods for hierarchical retrieval, while being on par with the latest approaches when evaluating fine-grained ranking performances. Finally, we show that HAPPIER leads to better organization of the embedding space, and prevents most severe failure cases of non-hierarchical methods. Our code is publicly available at: this https URL.

Abstract (translated)

URL

https://arxiv.org/abs/2207.04873

PDF

https://arxiv.org/pdf/2207.04873.pdf


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