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What Will Your Future Child Look Like? Modeling and Synthesis of Hereditary Patterns of Facial Dynamics

机译:您未来的孩子长什么样?面部动力学遗传模式的建模与综合

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Analysis of kinship from facial images or videos is an important problem. Prior machine learning and computer vision studies approach kinship analysis as a verification or recognition task. In this paper, first time in the literature, we propose a kinship synthesis framework, which generates smile videos of (probable) children from the smile videos of parents. While the appearance of a child's smile is learned using a convolutional encoder-decoder network, another neural network models the dynamics of the corresponding smile. The smile video of the estimated child is synthesized by the combined use of appearance and dynamics models. In order to validate our results, we perform kinship verification experiments using videos of real parents and estimated children generated by our framework. The results show that generated videos of children achieve higher correct verification rates than those of real children. Our results also indicate that the use of generated videos together with the real ones in the training of kinship verification models, increases the accuracy, suggesting that such videos can be used as a synthetic dataset.
机译:从面部图像或视频分析亲属关系是一个重要的问题。先前的机器学习和计算机视觉研究将亲属关系分析作为验证或识别任务。在本文中,我们首次提出了亲属关系综合框架,该框架可从父母的微笑视频生成(可能)孩子的微笑视频。虽然使用卷积编码器/解码器网络学习了孩子的笑容,但另一个神经网络对相应笑容的动力学进行了建模。估计孩子的微笑视频是通过外观和动力学模型的组合使用而合成的。为了验证我们的结果,我们使用由我们的框架生成的真实父母和估计子女的视频进行亲戚关系验证实验。结果表明,生成的儿童视频比真实儿童的视频具有更高的正确验证率。我们的结果还表明,在亲缘关系验证模型的训练中,将生成的视频与真实视频一起使用会提高准确性,这表明此类视频可用作合成数据集。

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