CVCYLGJun 2, 2022

Improving Fairness in Large-Scale Object Recognition by CrowdSourced Demographic Information

arXiv:2206.01326v13 citationsh-index: 17
Originality Incremental advance
AI Analysis

It addresses fairness for diverse cultural representation in object recognition, though it is incremental as it applies existing crowdsourcing methods to a new fairness context.

The paper tackles the problem of fairness in object recognition by proposing a crowdsourcing approach to assign fair relevance scores to classes, resulting in a much fairer coverage of the world in landmark recognition datasets.

There has been increasing awareness of ethical issues in machine learning, and fairness has become an important research topic. Most fairness efforts in computer vision have been focused on human sensing applications and preventing discrimination by people's physical attributes such as race, skin color or age by increasing visual representation for particular demographic groups. We argue that ML fairness efforts should extend to object recognition as well. Buildings, artwork, food and clothing are examples of the objects that define human culture. Representing these objects fairly in machine learning datasets will lead to models that are less biased towards a particular culture and more inclusive of different traditions and values. There exist many research datasets for object recognition, but they have not carefully considered which classes should be included, or how much training data should be collected per class. To address this, we propose a simple and general approach, based on crowdsourcing the demographic composition of the contributors: we define fair relevance scores, estimate them, and assign them to each class. We showcase its application to the landmark recognition domain, presenting a detailed analysis and the final fairer landmark rankings. We present analysis which leads to a much fairer coverage of the world compared to existing datasets. The evaluation dataset was used for the 2021 Google Landmark Challenges, which was the first of a kind with an emphasis on fairness in generic object recognition.

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