Publication | Open Access
Emotion-based Stereotypes in Image Analysis Services
16
Citations
15
References
2020
Year
Unknown Venue
Social PsychologyRacial PrejudiceVision-based Cognitive ServicesSocial CategorizationCommunicationMultimodal Sentiment AnalysisSocial SciencesPsychologyEmotional ResponseBiasAffective ComputingStereotypesRacismReal-time SecuritySocial IdentityAlgorithmic BiasPeople ImagesApplied Social PsychologyBias DetectionSocial CognitionSocial ComputingImage Analysis ServicesArtsEmotionEmotion Recognition
Vision-based cognitive services (CogS) have become crucial in a wide range of applications, from real-time security and social networks to smartphone applications. Many services focus on analyzing people images. When it comes to facial analysis, these services can be misleading or even inaccurate, raising ethical concerns such as the amplification of social stereotypes. We analyzed popular Image Tagging CogS that infer emotion from a person's face, considering whether they perpetuate racial and gender stereotypes concerning emotion. By comparing both CogS and Human-generated descriptions on a set of controlled images, we highlight the need for transparency and fairness in CogS. In particular, we document evidence that CogS may actually be more likely than crowdworkers to perpetuate the stereotype of the "angry black man" and often attribute black race individuals with "emotions of hostility".
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