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A hierarchically trained generative network for robust facial symmetrization

机译:分级训练的生成网络可实现强劲的面部对称性

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摘要

Face symmetrization has extensive applications in both medical and academic fields, such as facial disorder diagnosis. Human face possesses an important characteristic, which is as known as symmetry. However, in many scenarios, the perfect symmetry doesn’t exist in human faces, which yields a large number of studies around this topic. For example, facial palsy evaluation, facial beauty evaluation based on facial symmetry analysis, and many among others. Currently, there are still very limited researches dedicated for automatic facial symmetrization. Most of the existing studies only utilized their own implantations for facial symmetrization to assist their interdisciplinary academic researches. Limitations thus can be noticed in their methods, such as the requirements for manual interventions. Furthermore, most existing methods utilize facial landmark detection algorithms for automatic facial symmetrization. Though accuracies of the landmark detection algorithms are promising, the uncontrolled conditions in the facial images can still negatively impact the performance of the symmetrical face production. To this end, this paper presents a joint-loss enhanced deep generative network model for automatic facial symmetrization, which is achieved by a full facial image analysis. The joint-loss consists of a pair of adversarial losses and an identity loss. The adversarial losses try to make the generated symmetrical face as realistic as possible, while the identity loss helps to constrain the output to have the same identity of the person in the original input as much as possible. Rather than an end-to-end learning strategy, the proposed model is constructed by a multi-stage training process, which avoids the demand for a large size of the symmetrical face as training data. Experiments are conducted with comparisons with several existing methods based on some of the most popular facial landmark detection algorithms. Competitive results of the proposed method are demonstrated.
机译:面部对称化在医学和学术领域都有广泛的应用,例如面部疾病诊断。人脸具有一个重要的特征,即对称性。但是,在许多情况下,人脸并不存在完美的对称性,因此围绕该主题进行了大量研究。例如,面部麻痹评估,基于面部对称性分析的面部美容评估等等。当前,致力于自动面部对称化的研究仍然非常有限。大多数现有研究仅利用自己的植入物进行面部对称化,以协助其跨学科的学术研究。因此,可以在其方法中注意到局限性,例如手动干预的要求。此外,大多数现有方法利用面部标志检测算法来自动进行面部对称。尽管界标检测算法的准确性是有前途的,但是面部图像中不受控制的条件仍然会负面影响对称面部生成的性能。为此,本文提出了一种用于全脸自动对称化的联合损失增强型深度生成网络模型,该模型通过全脸图像分析实现。共同损失包括一对对抗损失和一个身份损失。对抗性损失试图使生成的对称面孔尽可能逼真,而身份损失则有助于将输出约束为在原始输入中具有与该人相同的身份。所提出的模型不是通过端到端的学习策略,而是通过多阶段的训练过程构建的,从而避免了将大量对称脸作为训练数据的需求。实验是根据几种最流行的面部标志检测算法,与几种现有方法进行比较。证明了该方法的竞争结果。

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