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arxiv:2108.08874

Towards A Fairer Landmark Recognition Dataset

Published on Aug 19, 2021
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Abstract

A new landmark recognition dataset is introduced, focusing on global fairness by estimating landmark relevance using Google Maps data and demographic information, leading to better worldwide coverage for model evaluation.

AI-generated summary

We introduce a new landmark recognition dataset, which is created with a focus on fair worldwide representation. While previous work proposes to collect as many images as possible from web repositories, we instead argue that such approaches can lead to biased data. To create a more comprehensive and equitable dataset, we start by defining the fair relevance of a landmark to the world population. These relevances are estimated by combining anonymized Google Maps user contribution statistics with the contributors' demographic information. We present a stratification approach and analysis which leads to a much fairer coverage of the world, compared to existing datasets. The resulting datasets are used to evaluate computer vision models as part of the the Google Landmark Recognition and RetrievalChallenges 2021.

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