Automatic skin and hair masking using fully convolutional networks

Siyang Qin, Seongdo Kim, R. Manduchi
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引用次数: 16

Abstract

Selfies have become commonplace. More and more people take pictures of themselves, and enjoy enhancing these pictures using a variety of image processing techniques. One specific functionality of interest is automatic skin and hair segmentation, as this allows for processing one's skin and hair separately. Traditional approaches require user input in the form of fully specified trimaps, or at least of “scribbles” indicating foreground and background areas, with high-quality masks then generated via matting. Manual input, however, can be difficult or tedious, especially on a smartphone's small screen. In this paper, we propose the use of fully convolutional networks (FCN) and fully-connected CRF to perform pixel-level semantic segmentation into skin, hair and background. The trimap thus generated is given as input to a standard matting algorithm, resulting in accurate skin and hair alpha masks. Our method achieves state-of-the-art performance on the LFW Parts dataset [1]. The effectiveness of our method is also demonstrated with a specific application case.
自动皮肤和头发掩蔽使用全卷积网络
自拍已经变得司空见惯。越来越多的人给自己拍照,并喜欢使用各种图像处理技术来增强这些照片。我们感兴趣的一个特定功能是自动皮肤和头发分割,因为这允许单独处理一个人的皮肤和头发。传统的方法需要用户以完全指定的trimaps的形式输入,或者至少是指示前景和背景区域的“涂鸦”,然后通过抠图生成高质量的蒙版。然而,手动输入可能很困难或乏味,尤其是在智能手机的小屏幕上。在本文中,我们提出使用全卷积网络(FCN)和全连接的CRF对皮肤、头发和背景进行像素级语义分割。生成的trimap作为标准抠图算法的输入,产生准确的皮肤和头发alpha遮罩。我们的方法在LFW零件数据集上达到了最先进的性能[1]。通过具体的应用实例验证了该方法的有效性。
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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