Subject Guided Eye Image Synthesis with Application to Gaze Redirection.

Harsimran Kaur, Roberto Manduchi
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Abstract

We propose a method for synthesizing eye images from segmentation masks with a desired style. The style encompasses attributes such as skin color, texture, iris color, and personal identity. Our approach generates an eye image that is consistent with a given segmentation mask and has the attributes of the input style image. We apply our method to data augmentation as well as to gaze redirection. The previous techniques of synthesizing real eye images from synthetic eye images for data augmentation lacked control over the generated attributes. We demonstrate the effectiveness of the proposed method in synthesizing realistic eye images with given characteristics corresponding to the synthetic labels for data augmentation, which is further useful for various tasks such as gaze estimation, eye image segmentation, pupil detection, etc. We also show how our approach can be applied to gaze redirection using only synthetic gaze labels, improving the previous state of the art results. The main contributions of our paper are i) a novel approach for Style-Based eye image generation from segmentation mask; ii) the use of this approach for gaze-redirection without the need for gaze annotated real eye images.

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将受试者引导的眼图合成应用于注视重定向。
我们提出了一种从具有所需风格的分割蒙版合成眼睛图像的方法。风格包括肤色、纹理、虹膜颜色和个人身份等属性。我们的方法生成的眼部图像与给定的分割蒙版一致,并具有输入风格图像的属性。我们将这种方法应用于数据增强和注视重定向。以前用于数据增强的合成眼球图像合成真实眼球图像的技术缺乏对生成属性的控制。我们展示了所提出的方法在合成具有与合成标签相对应的给定特征的真实眼部图像以用于数据增强方面的有效性,这对于各种任务,如凝视估计、眼部图像分割、瞳孔检测等都非常有用。我们还展示了如何将我们的方法应用于仅使用合成注视标签的注视重定向,从而改进了之前的技术成果。我们论文的主要贡献在于:i) 从分割掩码中生成基于风格的眼部图像的新方法;ii) 使用这种方法进行注视重定向,而无需注视注释的真实眼部图像。
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