Computer Science38th Conference on Neural Information Processing Systems (NeurIPS 2024)
To Err Like Human: Affective Bias-Inspired Measures for Visual Emotion Recognition Evaluation
C. Zhao, J. Shi, et al.
Accuracy treats all errors equally — but emotions don’t. This paper introduces a novel evaluation metric for visual emotion recognition based on Mikel’s emotion wheel: misclassifications are weighted by psychological distance so confusing 'excitement' with 'anger' is penalized more than with 'awe'. Semi-supervised experiments and a user study show the metric better aligns with human cognitive laws than plain accuracy. Code: https://github.com/ZhaoChenxi-nku/ECC. Research conducted by Chenxi Zhao, Jinglei Shi, Liqiang Nie, and Jufeng Yang.
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