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To Err Like Human: Affective Bias-Inspired Measures for Visual Emotion Recognition Evaluation
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.... show more
Abstract
Accuracy is a commonly adopted performance metric in various classification tasks, which measures the proportion of correctly classified samples among all samples. It assumes equal importance for all classes, hence equal severity for misclassifications. However, in the task of emotional classification, due to the psychological similarities between emotions, misclassifying a certain emotion into one class may be more severe than another, e.g., misclassifying 'excitement' as 'anger' apparently is more severe than as 'awe'. Albeit high meaningful for many applications, metrics capable of measuring these cases of misclassifications in visual emotion recognition tasks have yet to be explored. In this paper, based on Mikel’s emotion wheel from psychology, we propose a novel approach for evaluating the performance in visual emotion recognition, which takes into account the distance on the emotion wheel between different emotions to mimic the psychological nuances of emotions. Experimental results in semi-supervised learning on emotion recognition and user study have shown that our proposed metrics is more effective than the accuracy to assess the performance and conforms to the cognitive laws of human emotions. The code is available at [https://github.com/ZhaoChenxi-nku/ECC](https://github.com/ZhaoChenxi-nku/ECC)
Publisher
38th Conference on Neural Information Processing Systems (NeurIPS 2024)
Published On
Authors
Chenxi Zhao, Jinglei Shi, Liqiang Nie, Jufeng Yang
Tags
Visual emotion recognitionEmotion wheelEvaluation metricsMisclassification severitySemi-supervised learningPsychological distanceCognitive laws of emotions
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