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Hierarchical face parsing via deep learning

机译:通过深度学习进行分层人脸解析

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This paper investigates how to parse (segment) facial components from face images which may be partially occluded. We propose a novel face parser, which recasts segmentation of face components as a cross-modality data transformation problem, i.e., transforming an image patch to a label map. Specifically, a face is represented hierarchically by parts, components, and pixel-wise labels. With this representation, our approach first detects faces at both the part- and component-levels, and then computes the pixel-wise label maps (Fig.1). Our part-based and component-based detectors are generatively trained with the deep belief network (DBN), and are discriminatively tuned by logistic regression. The segmentators transform the detected face components to label maps, which are obtained by learning a highly nonlinear mapping with the deep autoencoder. The proposed hierarchical face parsing is not only robust to partial occlusions but also provide richer information for face analysis and face synthesis compared with face keypoint detection and face alignment. The effectiveness of our algorithm is shown through several tasks on 2, 239 images selected from three datasets (e.g., LFW [12], BioID [13] and CUFSF [29]).
机译:本文研究如何从可能被部分遮挡的面部图像中解析(分割)面部成分。我们提出了一种新颖的人脸解析器,该人脸解析器将人脸成分的分割重铸为一种跨模态数据转换问题,即将图像补丁转换为标签图。具体而言,面部由零件,组件和逐像素标签分层表示。通过这种表示,我们的方法首先在零件和组件级别都检测到人脸,然后计算像素方向的标签图(图1)。我们的基于零件和基于组件的探测器使用深度置信网络(DBN)进行生成训练,并通过逻辑回归进行判别式调整。分割器将检测到的面部分量转换为标签图,这些标签图是通过使用深度自动编码器学习高度非线性的映射而获得的。与面部关键点检测和面部对齐相比,所提出的分层面部解析不仅对部分遮挡具有鲁棒性,而且还为面部分析和面部合成提供了更丰富的信息。我们的算法的有效性通过从3个数据集(例如LFW [12],BioID [13]和CUFSF [29])中选择的2张239张图像上的几个任务得到证明。

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