{"title":"高斯过程偏好学习在人格特质相关面部特征视觉化中的应用","authors":"Keito Shiroshita, Masashi Komori, Koyo Nakamura, Maiko Kobayashi, Katsumi Watanabe","doi":"10.1109/CSDE53843.2021.9718431","DOIUrl":null,"url":null,"abstract":"People automatically make inferences about other people’s personality traits based on their facial features. This study aims to apply a sequential experimental design based on Bayesian optimization (BO) in order to elucidate the relationship between impressions of personality and faces and facial features. We used a BO that incorporates Gaussian process preference learning (GPPL) which allows us to estimate a utility function based on a pairwise comparison task. One hundred and six Japanese university students provided photographs and each male and female facial image was embedded into a latent representation (18 x 512 dimensions) in the StyleGAN2 network using the Flickr-Faces-HQ (FFHQ) dataset. Using PCA, the dimensions of the latent representations were reduced to an 8-dimensional subspace, which we refer to as the Japanese face space. The participants were asked to select which faces were more trustworthy from among the images in the first session and the more dominant faces in the second session. The stimulus images were synthesized using the pre-trained StyleGAN2 model within the face space. Each session consisted of 100 trials. The stimuli for each session of the first 95 trials were created based on randomly generated parameters in the face subspace, while the stimuli for the remaining five trials were created based on the parameters calculated using the acquisition function. Facial traits related to trustworthiness and dominance were estimated based on the averaged utility functions. The impression of trustworthiness was found to be associated with facial aversion, while dominance was associated with sexual dimorphism. The results suggest that GPPL is an effective method for elucidating average psychological evaluations of complex stimuli.","PeriodicalId":166950,"journal":{"name":"2021 IEEE Asia-Pacific Conference on Computer Science and Data Engineering (CSDE)","volume":"37 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2021-12-08","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Application of Gaussian Process Preference Learning for Visualizing Facial Features Related to Personality Traits\",\"authors\":\"Keito Shiroshita, Masashi Komori, Koyo Nakamura, Maiko Kobayashi, Katsumi Watanabe\",\"doi\":\"10.1109/CSDE53843.2021.9718431\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"People automatically make inferences about other people’s personality traits based on their facial features. This study aims to apply a sequential experimental design based on Bayesian optimization (BO) in order to elucidate the relationship between impressions of personality and faces and facial features. We used a BO that incorporates Gaussian process preference learning (GPPL) which allows us to estimate a utility function based on a pairwise comparison task. One hundred and six Japanese university students provided photographs and each male and female facial image was embedded into a latent representation (18 x 512 dimensions) in the StyleGAN2 network using the Flickr-Faces-HQ (FFHQ) dataset. Using PCA, the dimensions of the latent representations were reduced to an 8-dimensional subspace, which we refer to as the Japanese face space. The participants were asked to select which faces were more trustworthy from among the images in the first session and the more dominant faces in the second session. The stimulus images were synthesized using the pre-trained StyleGAN2 model within the face space. Each session consisted of 100 trials. The stimuli for each session of the first 95 trials were created based on randomly generated parameters in the face subspace, while the stimuli for the remaining five trials were created based on the parameters calculated using the acquisition function. Facial traits related to trustworthiness and dominance were estimated based on the averaged utility functions. The impression of trustworthiness was found to be associated with facial aversion, while dominance was associated with sexual dimorphism. 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引用次数: 0
摘要
人们会根据别人的面部特征自动推断出他们的性格特征。本研究旨在运用基于贝叶斯优化(BO)的序贯实验设计,探讨人格印象与人脸及五官的关系。我们使用了一个包含高斯过程偏好学习(GPPL)的BO,它允许我们基于两两比较任务估计效用函数。106名日本大学生提供了照片,每个男性和女性的面部图像都被嵌入到StyleGAN2网络中使用Flickr-Faces-HQ (FFHQ)数据集的潜在表示(18 x 512维)中。使用PCA,潜在表征的维度被减少到一个8维的子空间,我们称之为日本人脸空间。参与者被要求从第一组和第二组图片中选出更值得信任的面孔。使用预训练的StyleGAN2模型在人脸空间内合成刺激图像。每个疗程包括100个试验。前95个试验的每一阶段的刺激是基于人脸子空间中随机生成的参数创建的,其余5个试验的刺激是基于使用获取函数计算的参数创建的。基于平均效用函数估计可信性和支配性相关的面部特征。值得信赖的印象被发现与面部厌恶有关,而支配与两性二态性有关。结果表明,GPPL是解释复杂刺激平均心理评价的有效方法。
Application of Gaussian Process Preference Learning for Visualizing Facial Features Related to Personality Traits
People automatically make inferences about other people’s personality traits based on their facial features. This study aims to apply a sequential experimental design based on Bayesian optimization (BO) in order to elucidate the relationship between impressions of personality and faces and facial features. We used a BO that incorporates Gaussian process preference learning (GPPL) which allows us to estimate a utility function based on a pairwise comparison task. One hundred and six Japanese university students provided photographs and each male and female facial image was embedded into a latent representation (18 x 512 dimensions) in the StyleGAN2 network using the Flickr-Faces-HQ (FFHQ) dataset. Using PCA, the dimensions of the latent representations were reduced to an 8-dimensional subspace, which we refer to as the Japanese face space. The participants were asked to select which faces were more trustworthy from among the images in the first session and the more dominant faces in the second session. The stimulus images were synthesized using the pre-trained StyleGAN2 model within the face space. Each session consisted of 100 trials. The stimuli for each session of the first 95 trials were created based on randomly generated parameters in the face subspace, while the stimuli for the remaining five trials were created based on the parameters calculated using the acquisition function. Facial traits related to trustworthiness and dominance were estimated based on the averaged utility functions. The impression of trustworthiness was found to be associated with facial aversion, while dominance was associated with sexual dimorphism. The results suggest that GPPL is an effective method for elucidating average psychological evaluations of complex stimuli.