Real-Time Deep Hair Matting on Mobile Devices

Alex Levinshtein, Cheng Chang, Edmund Phung, I. Kezele, W. Guo, P. Aarabi
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引用次数: 23

Abstract

Augmented reality is an emerging technology in many application domains. Among them is the beauty industry, where live virtual try-on of beauty products is of great importance. In this paper, we address the problem of live hair color augmentation. To achieve this goal, hair needs to be segmented quickly and accurately. We show how a modified MobileNet CNN architecture can be used to segment the hair in real-time. Instead of training this network using large amounts of accurate segmentation data, which is difficult to obtain, we use crowd sourced hair segmentation data. While such data is much simpler to obtain, the segmentations there are noisy and coarse. Despite this, we show how our system can produce accurate and fine-detailed hair mattes, while running at over 30 fps on an iPad Pro tablet.
移动设备上的实时深层毛发铺垫
增强现实技术在许多应用领域都是一项新兴技术。其中包括美容行业,美容产品的实时虚拟试戴非常重要。在本文中,我们解决的问题,活的头发颜色增加。为了实现这一目标,需要快速准确地分割头发。我们展示了一个改进的MobileNet CNN架构如何用于实时分割头发。我们没有使用大量难以获得的精确分割数据来训练这个网络,而是使用了众包的头发分割数据。虽然这样的数据更容易获得,但那里的分割是有噪声和粗糙的。尽管如此,我们展示了我们的系统如何在iPad Pro平板电脑上以超过30 fps的速度运行时产生准确而细致的头发哑光。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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