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Cheong et al., 2021 - Google Patents

The hitchhiker's guide to bias and fairness in facial affective signal processing: Overview and techniques

Cheong et al., 2021

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Document ID
452478596022845283
Author
Cheong J
Kalkan S
Gunes H
Publication year
Publication venue
IEEE Signal Processing Magazine

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Snippet

Given the increasing prevalence of facial analysis technology, the problem of bias in the tools is now becoming an even greater source of concern. Several studies have highlighted the pervasiveness of such discrimination, and many have sought to address the problem by …
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