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Deep Appearance Models: A Deep Boltzmann Machine Approach for Face Modeling

机译:深度外观模型:深博尔兹曼机械造型方法

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摘要

The interpretation through synthesis approach to analyze face images, particularly Active Appearance Models (AAMs) method, has become one of the most successful face modeling approaches over the last two decades. AAM models have ability to represent face images through synthesis using a controllable parameterized Principal Component Analysis (PCA) model. However, the accuracy and robustness of the synthesized faces of AAMs are highly depended on the training sets and inherently on the generalizability of PCA subspaces. This paper presents a novel Deep Appearance Models (DAMs) approach, an efficient replacement for AAMs, to accurately capture both shape and texture of face images under large variations. In this approach, three crucial components represented in hierarchical layers are modeled using the Deep Boltzmann Machines (DBM) to robustly capture the variations of facial shapes and appearances. DAMs are therefore superior to AAMs in inferencing a representation for new face images under various challenging conditions. The proposed approach is evaluated in various applications to demonstrate its robustness and capabilities, i.e. facial super-resolution reconstruction, facial off-angle reconstruction or face frontalization, facial occlusion removal and age estimation using challenging face databases, i.e. Labeled Face Parts in the Wild, Helen and FG-NET. Comparing to AAMs and other deep learning based approaches, the proposed DAMs achieve competitive results in those applications, thus this showed their advantages in handling occlusions, facial representation, and reconstruction.
机译:通过综合方法来解释来分析面部图像,特别是活跃的外观模型(AAMS)方法,已成为过去二十年中最成功的面部建模方法之一。 AAM模型能够通过使用可控参数化主成分分析(PCA)模型来表示面部图像。然而,AAMS合成面的精度和稳健性高度依赖于训练集,并固有地对PCA子空间的普遍性。本文提出了一种新颖的深度外观模型(大坝)方法,有效的AAM有效的替代品,在大变化下准确地捕获面部图像的形状和纹理。在这种方法中,在分层层中表示的三个重要组件使用深螺栓玻璃机(DBM)进行建模,以鲁棒地捕获面部形状和外观的变化。因此,大坝优于一个在各种具有挑战性条件下推断出新的面部图像的代表的AAM。在各种应用中评估所提出的方法,以展示其鲁棒性和能力,即使用具有挑战性的面部数据库,即野外标记的面部部件,面部偏离角重建,面部离心重建,面部闭角重建,面部闭合去除和年龄估计,即野外的面部部件,海伦和FG-NET。与AAMS和其他基于深度学习的方法相比,拟议的水坝在这些应用中实现了竞争力,这在处理闭塞,面部表示和重建方面表现出它们的优势。

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