协议水平估计的神经条件有序随机场

Nemanja Rakicevic, Ognjen Rudovic, Stavros Petridis, M. Pantic
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引用次数: 3

摘要

我们提出了一种新的方法来自动估计面部图像的一致强度水平。为此,我们使用MAHNOB Mimicry数据库记录了在二元交互过程中的受试者,其中面部图像使用李克特量表(强烈不同意,不同意,中性,同意和强烈同意)根据同意强度水平进行注释。通过条件有序随机场模型实现了协议层次的动态建模。具体来说,我们提出了一种新的神经条件有序随机场模型,该模型使用神经网络的概念从人脸图像中执行非线性特征提取,同时还建模了协议级别之间的时间和顺序关系。我们在实验中表明,所提出的方法优于现有的序列数据建模方法。在5个实验对象上获得的初步结果表明,使用该方法可以成功地从面部图像中估计出一致性的强度(39% F1得分)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural conditional ordinal random fields for agreement level estimation
We present a novel approach to automated estimation of agreement intensity levels from facial images. To this end, we employ the MAHNOB Mimicry database of subjects recorded during dyadic interactions, where the facial images are annotated in terms of agreement intensity levels using the Likert scale (strong disagreement, disagreement, neutral, agreement and strong agreement). Dynamic modelling of the agreement levels is accomplished by means of a Conditional Ordinal Random Field model. Specifically, we propose a novel Neural Conditional Ordinal Random Field model that performs non-linear feature extraction from face images using the notion of Neural Networks, while also modelling temporal and ordinal relationships between the agreement levels. We show in our experiments that the proposed approach outperforms existing methods for modelling of sequential data. The preliminary results obtained on five subjects demonstrate that the intensity of agreement can successfully be estimated from facial images (39% F1 score) using the proposed method.
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