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R2-ResNeXt: A ResNeXt-Based Regression Model with Relative Ranking for Facial Beauty Prediction

机译:R 2 -resnext:基于RENEXT的回归模型,具有相对排名的面部美容预测

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The purpose of facial beauty prediction (FBP) is to develop a machine that automatically evaluates facial attractiveness in a human perceptual manner. One of the essential problem of facial beauty prediction is the discriminative facial representation of the prediction model. Previous methods formulate FBP as a specific supervised learning of classification, regression, or ranking. We find that the relative ranking information is useful to improve the regression model of FBP. Based on this observation, this paper proposes a regression model guided by the relative ranking with the state-of-the-art Res NeXt structure to achieve FBP, and we call the model as R2 -ResNeXt. The R2 -ResNeXt facilitates to learn the representation and predictor guided by relative ranking for facial attractiveness assessment in an end-to-end manner. To train the R2 -ResNeXt, we develop an aggregated loss that combines regression loss and pairwise ranking loss linearly. We also design a method to construct a dataset containing relatively -labelled image pairs whose individual images are sampled from the SCUT-FBP benchmark database. The experimental results on the SCUT-FBP benchmark show that our R2 -ResNeXt achieves the state-of-the-art performance compared with related literatures, and further indicates the effectiveness of the deep residual architecture and relative beauty ranking into regression task for facial beauty prediction.
机译:面部美容预测(FBP)的目的是开发一种机器,可以以人类的感知方式自动评估面部吸引力。面部美容预测的基本问题之一是预测模型的鉴别性面部表示。以前的方法将FBP制定为分类,回归或排名的特定监督学习。我们发现相对排名信息可用于改进FBP的回归模型。基于该观察,本文提出了一种回归模型,以与最先进的RES下一结构实现FBP的相对排名,我们称之为r 2 -resnext。 r. 2 -Resnext有助于了解以端到端的方式对面部吸引力评估的相对排名引导的表示和预测。训练r 2 -Resnext,我们开发了一个聚合的损失,将回归损耗和成对排序丢失线性结合起来。我们还设计一种方法来构造包含相对标识的图像对的数据集,其单个图像被从SCUT-FBP基准数据库采样。 SCUT-FBP基准的实验结果表明我们的r 2 -Resnext与相关文献相比实现了最先进的性能,并进一步表明了深度剩余架构和相对美女排名的有效性,进入面部美容预测的回归任务。

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