Visualizing Apparent Personality Analysis with Deep Residual Networks

Yağmur Güçlütürk, Umut Güçlü, Marc Pérez, H. Escalante, Xavier Baró, C. Andújar, Isabelle M Guyon, Julio C. S. Jacques Junior, Meysam Madadi, Sergio Escalera, M. Gerven, R. Lier
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引用次数: 18

Abstract

Automatic prediction of personality traits is a subjective task that has recently received much attention. Specifically, automatic apparent personality trait prediction from multimodal data has emerged as a hot topic within the filed of computer vision and, more particularly, the so called "looking at people" sub-field. Considering "apparent" personality traits as opposed to real ones considerably reduces the subjectivity of the task. The real world applications are encountered in a wide range of domains, including entertainment, health, human computer interaction, recruitment and security. Predictive models of personality traits are useful for individuals in many scenarios (e.g., preparing for job interviews, preparing for public speaking). However, these predictions in and of themselves might be deemed to be untrustworthy without human understandable supportive evidence. Through a series of experiments on a recently released benchmark dataset for automatic apparent personality trait prediction, this paper characterizes the audio and visual information that is used by a state-of-the-art model while making its predictions, so as to provide such supportive evidence by explaining predictions made. Additionally, the paper describes a new web application, which gives feedback on apparent personality traits of its users by combining model predictions with their explanations.
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用深度残差网络可视化表观人格分析
人格特征的自动预测是一项最近受到广泛关注的主观任务。具体来说,从多模态数据中自动预测表观人格特质已经成为计算机视觉领域的一个热门话题,更具体地说,是所谓的“看人”子领域。考虑“表面的”人格特征而不是真实的人格特征,大大降低了任务的主观性。现实世界的应用程序涉及广泛的领域,包括娱乐、健康、人机交互、招聘和安全。性格特征的预测模型在很多情况下对个人都很有用(例如,准备工作面试,准备公开演讲)。然而,如果没有人类可以理解的支持证据,这些预测本身可能被认为是不可信的。本文通过在最近发布的一个自动表观人格特质预测基准数据集上的一系列实验,对一个最先进的模型在进行预测时所使用的音频和视觉信息进行表征,从而通过解释所做的预测来提供支持性证据。此外,本文还介绍了一种新的网络应用程序,该应用程序通过将模型预测与用户的解释相结合,对用户的明显个性特征进行反馈。
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