Leveraging Computer Vision Face Representation to Understand Human Face Representation.

Chaitanya K Ryali, Xiaotian Wang, Angela J Yu
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Abstract

Face processing plays a critical role in human social life, from differentiating friends from enemies to choosing a life mate. In this work, we leverage various computer vision techniques, combined with human assessments of similarity between pairs of faces, to investigate human face representation. We find that combining a shape- and texture-feature based model (Active Appearance Model) with a particular form of metric learning, not only achieves the best performance in predicting human similarity judgments on held-out data (both compared to other algorithms and to humans), but also performs better or comparable to alternative approaches in modeling human social trait judgment (e.g. trustworthiness, attractiveness) and affective assessment (e.g. happy, angry, sad). This analysis yields several scientific findings: (1) facial similarity judgments rely on a relative small number of facial features (8-12), (2) race- and gender-informative features play a prominent role in similarity perception, (3) similarity-relevant features alone are insufficient to capture human face representation, in particular some affective features missing from similarity judgments are also necessary for constructing the complete psychological face representation.

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利用计算机视觉人脸表示来理解人脸表示。
面部处理在人类社会生活中起着至关重要的作用,从区分朋友和敌人到选择终身伴侣。在这项工作中,我们利用各种计算机视觉技术,结合人类对面孔之间相似性的评估,来研究人脸表征。我们发现,将基于形状和纹理特征的模型(活动外观模型)与特定形式的度量学习相结合,不仅在预测人类对保留数据的相似性判断方面取得了最佳表现(与其他算法和人类相比),而且在建模人类社会特征判断(例如可信度,吸引力)和情感评估(例如快乐,愤怒,悲伤)方面也表现得更好或与其他方法相当。这一分析得出了几个科学发现:(1)面部相似性判断依赖于相对较少的面部特征(8-12);(2)种族和性别信息特征在相似性感知中起着突出作用;(3)仅与相似性相关的特征不足以捕获人脸表征,特别是相似性判断中缺失的一些情感特征对于构建完整的心理面部表征也是必要的。
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