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Seeing the Unseen: Errors and Bias in Visual Datasets

2022-11-03 14:34:28
Hongrui Jin

Abstract

From face recognition in smartphones to automatic routing on self-driving cars, machine vision algorithms lie in the core of these features. These systems solve image based tasks by identifying and understanding objects, subsequently making decisions from these information. However, errors in datasets are usually induced or even magnified in algorithms, at times resulting in issues such as recognising black people as gorillas and misrepresenting ethnicities in search results. This paper tracks the errors in datasets and their impacts, revealing that a flawed dataset could be a result of limited categories, incomprehensive sourcing and poor classification.

Abstract (translated)

URL

https://arxiv.org/abs/2211.01847

PDF

https://arxiv.org/pdf/2211.01847.pdf


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