2021
DOI: 10.48550/arxiv.2108.08504
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Understanding and Mitigating Annotation Bias in Facial Expression Recognition

Abstract: The performance of a computer vision model depends on the size and quality of its training data. Recent studies have unveiled previously-unknown composition biases in common image datasets which then lead to skewed model outputs, and have proposed methods to mitigate these biases. However, most existing works assume that humangenerated annotations can be considered gold-standard and unbiased. In this paper, we reveal that this assumption can be problematic, and that special care should be taken to prevent mode… Show more

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“…This finding suggests that DA-FER produces fewer false positive and false negative cases and performs better classification. Therefore, it validates the effectiveness of the proposed domain adaptive method [44].…”
Section: Resultssupporting
confidence: 71%
“…This finding suggests that DA-FER produces fewer false positive and false negative cases and performs better classification. Therefore, it validates the effectiveness of the proposed domain adaptive method [44].…”
Section: Resultssupporting
confidence: 71%